Stuart Russell, Curriculum Vitae


Distinguished Professor of Computer Science, Cognitive Science, and Computational Precision Health and Michael H. Smith and Lotfi A. Zadeh Chair in Engineering, University of California, Berkeley
and Distinguished Professor of Computational Precision Health, University of California, San Francisco

Email russell@berkeley.edu
Home page http://www.cs.berkeley.edu/~russell

Education

B.A. (Hons.) 1st Class, Physics, Wadham College, University of Oxford, 1979-82.
Ph.D., Computer Science, Stanford University, 1982-86.

Employment history

2024-present, Professor, Computational Precision Health, University of California, San Francisco
2024, Chair, Computer Science Division, University of California, Berkeley
1996-present, Professor, Computer Science Division, University of California, Berkeley
2012-2014, Professeur Invité, Université Pierre et Marie Curie, Paris
2012-2014, Professeur, Fondation de l'École Normale Supérieure, Paris
2008-2011, Adjunct Professor, Department of Neurological Surgery, University of California, San Francisco
2008-2010, Chair, Department of Electrical Engineering and Computer Sciences, University of California, Berkeley
2006-2010, Chair, Computer Science Division, University of California, Berkeley
1991-96, Associate Professor, Computer Science Division, University of California, Berkeley
1986-91, Assistant Professor, Computer Science Division, University of California, Berkeley
1986, Summer employee, MCC, Austin, Texas, Machine learning research in the Large Scale KB Project (CYC)
1985-86, Research Assistant, Computer Science Dept., Stanford University
1983, Teaching Assistant, Computer Science Dept., Stanford University
1981, Programmer, graphics research project, IBM Los Angeles Scientific Center
1978-80 (1 year total), Programmer, IBM Systems Engineering Centre, Warwick, UK

Honours, Awards

Paper Prizes

Selected Invited/Keynote Speeches


Professional and Service

Government and international organizations

Co-Chair, Expert Group on AI Futures, OECD, 2023-present
Co-Chair, Global Futures Council on AI, World Economic Forum, 2022-present
Commissioner, Global Commission on Responsible AI in the Military Domain (GCREAIM), 2024-present
Vice-Chair, Global Agenda Council on AI and Robotics, World Economic Forum, 2014-16
Member, Global AI Council, World Economic Forum, 2016-22
Member, OECD Working Party on AI Governance (AIGO), 2021-present
Delegate, Global Summit on AI Safety (UK), 2023
United States Representative, Global Partnership on AI, 2022-present
Designated US Expert, G20 AI policy process, 2024
Member, AI Advisory Board Expert Group, United Nations Office of the Secretary-General
Member, AI Expert Group, UNESCO
Steering Committee, Joint European Disruptive Initiative (JEDI), 2017-present
Member, International AI Advisory Board, President of France, 2018-present
Member, AI International Scientific Board, Agence Nationale de la Recherche (France), 2019-present
President of the Jury, National AI Institutes (France), 2021-present
Senior Advisor, United Kingdom Governement International Scientific Report on Advanced AI Safety, 2024
Member, US delegation, US/China Track II dialogue on nuclear, cyber, and autonomous weapons, 2019, 2023, 2024
Member, US delegation, US/India Track II dialogue on cyber and autonomous weapons, 2022, 2023
US Department of State Speaker Program, Beijing, 2019
Ad Hoc Advisor to United Nations (Secretary General; High Representative for Disarmament); Japan (Ministry of Economy, Trade and Industry); United Kingdom (Prime Minister's Office; Department of Digital, Culture, Media, and Sport; Foreign, Commonwealth, and Development Office; Ministry of Defence; Strategic Command; Department of Science, Innovation, and Technology; Competition and Markets Authority; House of Lords All-Party Parliamentary Group on Drones; Center for Data Ethics and Innovation); Singapore (Prime Minister's Office; Ministry for Communications and Information); Germany (Foreign Ministry); France (Generative AI Committee); Ireland (Departments of the Taoiseach; Trade Promotion, Digital and Company Regulation; Enterprise, Trade and Employment; Justice; Foreign Affairs); Norway (Ministry of Justice and Public Security; Ministry of Education and Research); United States (Senate Judiciary Committee; National AI Advisory Committee; Department of State; Department of Defense Office of Net Assessment; Chief of Naval Operations; Army Chief of Staff; Army War College; Central Intelligence Agency; National Intelligence Council; Director, Defense Advanced Research Projects Agency; Director, Intelligence Advanced Research Projects Activity; Director of National Intelligence; Secretary of Commerce; Federal Communication Commission; US Embassy Beijing); European Union (EU Commission DG Connect; EU Parliament Committee on Civil Liberties, Justice and Home Affairs; European Central Bank); Council of Europe (AI Convention briefing); International Committee of the Red Cross (Summit on Lethal Autonomous Weapons).

Scientific societies

Executive Council Member, American Association for Artificial Intelligence, 1997-2000
Founding board member and Secretary, International Machine Learning Society, 2001-2007
Secretary, JMLR Foundation (Journal of Machine Learning Research)

Member, AAAI Committee on Ethics and Social Impact, 2015-2019
Member, AAAI Committee on Global AI Initiatives and Policy, 2022-present
Member, AAAI Conference Awards Committee, 2014
Co-Founder, AI Commons (aicommons.org)

Member, ACM Turing Award Committee, 2023-present
Member, ACM Grace Murray Hopper Award Committee, 2013-2016
Chair, ACM Grace Murray Hopper Award Committee, 2014-2015
Member, ACM Awards Committee, 2014-2016
Chair, ACM Task Force on Lethal Autonomous Weapons, 2020-present

Member, Nominating Panel, Japan Prize
Member, Nominating Panel, Kyoto Prize
Member, Nominating Panel, BBVA Foundation Prizes
Member, Nominating Panel, Ho-Am Prize
Referee, Templeton Prize
Referee, UKRI Turing Fellowship

Chairman, British Scientists Abroad, 1993-96
Organizing Committee, Newsletter Editor, and Spokesperson, British Scientists Abroad, 1990-92

Academic and non-profit advisory boards

Scientific Advisory Board, Sorbonne Center for AI, Paris
Scientific Advisory Board, SMART Laboratoire d'excellence, Paris
Academic Committee, Tsinghua University AI International Governance Institute
Advisory Board, Psychology of Technology Institute, Berkeley
Advisory Board, Risk and Security Laboratory, Berkeley
Executive Committee, Center for the Future of Intelligence, Cambridge
External Advisory Board, Center for the Study of Existential Risk, Cambridge
External Advisory Board, Future of Life Institute, Harvard/MIT
External Advisory Board, Machine Intelligence Research Institute, Berkeley
Advisory Board, Center for AI and Digital Policy, Washington, DC
Advisory Board, Americans for Responsible Innivation, Washington, DC
Advisory Board, Encode Justice
Advisory Board, ourfuturelife.org (educational charity)
Advisory Board, Aiphabet (educational charity)
Scientific Advisory Board, Center for European Policy Studies, Brussels
AI Security Advisory Board, Center for Long-Term Cybersecurity, Berkeley
Advisory Board, AI Policy Hub, Berkeley
Advisory Board, Berkeley Risk and Security Lab, School of Public Policy, Berkeley
International Advisory Board, Center for Artificial Intelligence Research, Hong Kong Univ. Sci. Tech.
Advisory Board, Berggruen Institute
Founding Member, Council on the Future
Co-Founder and Advisory Board co-chair, International Dialogues on AI Safety

Editorial and reviewing roles

Editor, Prentice Hall Series in Artificial Intelligence
Editor, Research Highlights, Communications of the ACM, 2008-2012
Associate Editor (Artificial Intelligence), Journal of the ACM, 2000-2008
Associate Editor and Advisory Board member, Journal of Artificial Intelligence Research
Associate Editor, Journal of Machine Learning Research
Editorial Board, Machine Learning Journal (until 2000)
Associate Editor, Artificial Intelligence
Editorial Board, AI Communications
Advisory Board, Science Robotics, 2016-present
Advisory Board, Springer-Verlag Series in Cognitive Technology
Board member and US-UK Secretary, Machine Intelligence Series
Advisory Editor for AI and Computer Science, MIT Press Encyclopaedia of the Cognitive Sciences

General-Co-Chair, Hybrid Human-AI Conference, 2025
Honorary Chair, IEEE Conference on Ubiquitous Intelligent Computing, 2024
Chair, NSF Workshop on Provably Safe and Beneficial AI, 2022
Co-Chair, Hastings Center Workshops on Control and Responsible Innovation in the Development of Autonomous Machines (2017-19)
Co-Chair, Conference on the Future of AI, 2015
Chair, AAMAS Workshop on the Future of Artificial Intelligence, 2014
Chair, IJCAI Panel on the Future of Artificial Intelligence, 2013
Chair, DARPA Workshop on Human-Level AI, 2004
Co-Chair, AAAI Fall Symposium on Learning Complex Behaviours, 1996
Co-Chair, NeurIPS Workshop on Learning in Bayesian Networks, 1995
Program and Conference Co-Chair, Int'l Conference on Machine Learning, 1995
Program and Symposium Chair, AAAI Symposium on AI and Limited Rationality, Stanford, 1989

Program Area Chair, AI and Cognitive Science areas, NeurIPS 96
Program Area Chair (Decision Theory, Machine Learning, Search), AAAI 94
Program Area Chair (Machine Learning), AAAI 90

Scientific Programme Committee, UN Comprehensive Nuclear-Test-Ban Treaty Organization Science & Technology Conference, 2020-21
Steering Committee, Global Forum on AI for Humanity, Paris, 2019
Organizing and Program Commitee, CTBTO HPC Workshop for Nuclear Explosion Monitoring, 2022, 2024; CogSci 2021 Workshop on Engineering and Reverse-Engineering Morality, 2021; NeurIPS 2021 Workshop on the Political Economy of Reinforcement Learning, 2021; NeurIPS 2020 Workshop on Broader Impacts of AI, 2020; Conference on AI Ethics and Social Impact, 2019, 2021; AAAI 19 Workshop on Safe AI; First International Workshop on Artificial Intelligence Safety Engineering, 2018; United Nations AI for Good Global Summit, 2018, 2019, 2023; CogSci 2017 Workshop on Cooperative Social Intelligence, 2017; 3rd International Workshop on Data Science in High Energy Physics, 2017; Beneficial AI Conference, 2017; IJCAI Workshop on Ethics of AI, 2016; AAAI Workshop on Ethics and Social Impact of AI, 2016; International Joint Conference on Artificial Intelligence, 2016; POPL Workshop on Probabilistic Programming Systems, 2016; Workshop on Data Science at the Large Hadron Collider, 2015; NeurIPS Workshop on Bounded Rationality and Rational Metareasoning, 2015; AAAI Workshop on Ethics of AI, 2015; NeurIPS Workshop on Probabilistic Programming Languages, 2014; ICML Workshop on Structured Learning on Graphs, 2013; International Workshop on Statistical Relational AI, 2012; NeurIPS Workshop on Probabilistic Programming Languages, 2011; AAAI Spring Symposium on Decision-Theoretic Planning, 1994; AAAI Fall Symposium on Planning and Learning in Games, 1993; IEEE Workshop on Imprecise and Approximate Computation, 1992; Workshop on Theoretical and Practical Design of Rational Agents, IJCAI 91.

Member, Program Committee, Conference of the Association the Advancement of AI (AAAI) 1988, 1990, 1992; Neural Information Processing Systems, 2020; International Conference on Machine Learning 1992, 1993, 1994, 1996, Third International Conference on Multistrategy Learning, 1993; International Conference on Knowledge Representation and Reasoning, 1994, 1998, 2002; ACM Workshop on Computational Learning Theory, 1998; European Conference on AI, 1996; European Conference on Machine Learning, 2000; KDD Workshop on Record Linkage, 2003; ICML Workshop on Statistical Relational Learning, 2004; ICML Workshop on Relational Reinforcement Learning, 2004; ICMl Workshop on Machine Learning for Clinical Data Analysis, 2012; Second Conference on Meaningful Use of Complex Medical Data, 2012.

National Science Foundation Review Panelist
Fellowship Panel, National Research Council
Proposal Reviewer, National Science Foundation, California MICRO Program, Air Force Office of Scientific Research, France-Berkeley Foundation
Panelist, Defense Threat Reduction Agency, 2001

Commentator, Behavioral and Brain Sciences
Reviewer, Nature, Science, Science Robotics, Artificial Intelligence Journal, Machine Learning Journal, Journal of Artificial Intelligence Research, Communications of the ACM, Journal of Global Pilicy, Journal of Policy and Society, Computational Intelligence Journal, International Journal of Intelligent Systems, Journal of the ACM, Journal of Logic and Computation, ACM Transactions on Programming Languages and Systems, ACM Transactions on Computer Systems, IEEE Transactions on Pattern Analysis and Machine Intelligence, IEEE Transactions on Data and Knowledge Engineering, IEEE Transactions on Systems, Man and Cybernetics, Natural Hazards, Journal of Global Policy, Cognitive Science Journal.
Reviewer, ACM Dissertation Award, 1988
Reviewer, International Joint Conference on Artificial Intelligence, 1987, 1989, 1991, 1993, 1995; Conference on Uncertainty in AI, 1991, 1992; International Conference on Automata, Languages, and Programming, 1987; Symposium on Parallel and Distributed Programming, 1993; Fifth Generation Computer Systems, 1992.
Book Reviewer, MIT Press, Pitman Press, Addison-Wesley, Morgan Kaufmann, Cambridge University Press, Oxford University Press, Elsevier

University Service

Computer Science Division

Chair (2006-10, 2024)
Chair, Faculty Search Committee (2000)
Faculty Search Committee (1994-96, 1997-98, 1999-2000, 2001-05, 2018-20)
Chair, Competitions Committee(1990-92)
Reentry Program Committee(1986-90)
Undergraduate Study Committee (1991)
Graduate Admissions Committee (2002)
Scheduling Officer (1993-97)

EECS Department

Vice-Chair for Undergraduate Matters (2011-12)
Chair (2008-10)
Associate Chair (2006-08)
Executive Committee (2001-02, 2005-06, 2014-17, 2018-)
Co-Chair, Faculty Retreat Committee (1998-99, 2003-04)
Co-Chair, Scheduling Committee (1993-97)
Undergraduate Advisor
Minority Graduate Student Mentor
Student Awards Committee
Faculty Search Committee (non-conventional computing)
Graduate Study Committee
Curriculum Revision Committee

Other departments

IEOR Dept Faculty Search Committee (1995)
Bioengineering Dept Faculty Search Committee (2000)
Cognitive Science Program Faculty Search Committee (2005)
Cognitive Science Program Ad Hoc Committee (2010)
Steering Committee, Computational Precision Health, 2021-present
Faculty Search Committee, Computational Precision Health, 2022, 2023

College of Engineering

Committee on Undergraduate Studies (2011-12)

University

Advisory Committee, Global Security Policy Lecture Series
Member, Working Group in Inclusive Intelligence (2018-)
Member, Committee on Budget and Interdepartmental Relations (2015-17) (evaluates and approves all faculty appointments and promotions on the Berkeley campus and allocates faculty resources to departments)
Chair, Committee on Budget and Interdepartmental Relations (2016-17)
Member, Divisional Council of the Academic Senate (2016-17)
Member, Academic Senate Budget Working Group (2016-17)
Member, Academic Senate Executive Committee (2016-17)
Committee on Undergraduate Scholarships and Honours (1996-2008)
Chair, Committee on Undergraduate Scholarships and Honours (2000-06)
Chair, Truman Subcommittee, Committee on Undergraduate Scholarships and Honours (1999-2000)
Member, Coordination Board for Undergraduate Admissions, Financial Aid, and Enrollment Management (2002-06)
Trustee, International Computer Science Institute (2006-10)
Director, Kavli Center for Science, Ethics, and the Public, 2021-present
Chair, Executive Committee for cluster hiring in AI, Inequality, and Society, 2024-

UC Systemwide

Steering Committee on Life Science Informatics (1999)
Co-Chair, UC Working Group on AI (2020-)

Publications

Books
  1. Stuart Russell The Use of Knowledge in Analogy and Induction. London: Pitman, 1989.
  2. Stuart Russell and Eric H. Wefald Do the Right Thing: Studies in Limited Rationality. Cambridge, MA: MIT Press, 1991.
  3. Stuart Russell and Peter Norvig Artificial Intelligence: A Modern Approach. Englewood Cliffs, NJ: Prentice Hall, 1995.
  4. Stuart Russell and Peter Norvig Solution Manual for ``Artificial Intelligence: A Modern Approach.'' Englewood Cliffs, NJ: Prentice Hall, 1995.
  5. Armand Prieditis and Stuart Russell (Eds.), Machine Learning: Proceedings of the Twelfth International Conference, Tahoe City, CA: Morgan Kaufmann, 1995.
  6. Stuart Russell and Peter Norvig, Inteligencia Artificial: Un Enfoque Moderno (R. Gutierrez, Tr.). Mexico City: Prentice Hall Hispanoamericana, 1997.
  7. Stuart Russell and Peter Norvig, [Artificial Intelligence: A Modern Approach] (in Japanese; Tr. Koichi Furukawa et al.). Tokyo: Kyoritsu Shuppan, 1997.
  8. Stuart Russell and Peter Norvig, Intelligenza Artificiale: Un Approccio Moderno (L. Aiello, Tr.). Turin, Italy: UTET Libreria Srl, 1998.
  9. Stuart Russell and Peter Norvig, Mesterséges Intelligencia Modern Megközelitésben. (Hungarian translation of Artificial Intelligence: A Modern Approach.) Budapest, Panem Publishing, 1999.
  10. Stuart Russell and Peter Norvig Artificial Intelligence: A Modern Approach (Second Edition). Upper Saddle River, NJ: Prentice Hall, 2003.
  11. Stuart Russell and Peter Norvig, ``Solution Manual for Artificial Intelligence: A Modern Approach.'' 2nd Edition, Prentice Hall, 2003.
  12. Stuart Russell and Peter Norvig, Inteligencia Artificial. (Portuguese translation of Artificial Intelligence: A Modern Approach, second edition.) Rio de Janeiro: Elsevier/Editora Campus, 2004.
  13. Stuart Russell and Peter Norvig, 《人工智能——一种现代方法(第二版)》 (Chinese Simplified translation of Artificial Intelligence: A Modern Approach, second edition.) Beijing: Posts and Telecommunications Press, 2004.
  14. Stuart Russell and Peter Norvig, Inteligencia Artificial: Un Enfoque Moderno. (Spanish translation of Artificial Intelligence: A Modern Approach, second edition.) Madrid: Pearson Educación, S. A., 2004.
  15. Stuart Russell and Peter Norvig, Τεχνητή Νοημοσύνη, Μια σύγχρονη προσέγγιση. (Greek translation of Artificial Intelligence: A Modern Approach, second edition.) Athens: Kleidarithmos, 2004.
  16. Stuart Russell and Peter Norvig, Intelligenza Artificiale Vol. 1 Un Approccio Moderno. (Vol. 1 of Italian translation of Artificial Intelligence: A Modern Approach, second edition.) Rome: Pearson Italia, 2005.
  17. Stuart Russell and Peter Norvig, Künstliche Intelligenz: Ein moderner Ansatz (2nd Edition). (German translation of Artificial Intelligence: A Modern Approach, second edition.) Munich: Verlag Pearson Studium, 2005.
  18. Stuart Russell and Peter Norvig, Искусственный интеллект: современный подход. (Russian translation of Artificial Intelligence: A Modern Approach, second edition.) Translated by Konstantin Ptitsyn. Moscow: Williams Publishing, 2005.
  19. Stuart Russell and Peter Norvig, Mesterséges Intelligencia Modern Megközelitésben. (Hungarian translation of Artificial Intelligence: A Modern Approach, second edition.) Budapest, Panem Publishing, 2006.
  20. Stuart Russell and Peter Norvig, Intelligenza Artificiale Vol. 2 Un Approccio Moderno. (Vol. 2 of Italian translation of Artificial Intelligence: A Modern Approach, second edition.) Rome: Pearson Italia, 2006.
  21. Stuart Russell and Peter Norvig, Intelligence artificielle, 2e éd.. (French translation of Artificial Intelligence: A Modern Approach, second edition.) Paris: Pearson Education France, 2006.
  22. Stuart Russell and Peter Norvig, (Japanese translation of Artificial Intelligence: A Modern Approach, second edition.) Koichi Furukawa, translator. Tokyo: Kyoritsu Shuppan, 2008.
  23. Stuart Russell and Peter Norvig, ``Artificial Intelligence: A Modern Approach.'' 3rd Edition, Prentice Hall, 2010.
  24. Stuart Russell and Peter Norvig, Intelligence artificielle, 3e éd.. (French translation of Artificial Intelligence: A Modern Approach, third edition.) Paris: Pearson Education France, 2010.
  25. Stuart Russell and Peter Norvig, Intelligenza Artificiale 3/Ed. Vol. 1 - Un Approccio Moderno. (Vol. 1 of Italian translation of Artificial Intelligence: A Modern Approach, third edition.) Rome: Pearson Italia, 2010.
  26. Stuart Russell and Peter Norvig, Veštačkka inteligencija, Savremeni pristup. (Serbian translation of Artificial Intelligence: A Modern Approach, third edition.) Belgrade, CET, 2011.
  27. Stuart Russell and Peter Norvig, Künstliche Intelligenz: Ein moderner Ansatz (3rd Edition). (German translation of Artificial Intelligence: A Modern Approach, third edition.) Munich: Verlag Pearson Studium, 2012.
  28. Stuart Russell and Peter Norvig, 《人工智能——一种现代方法(第三版)》 (Chinese Simplified translation of Artificial Intelligence: A Modern Approach, third edition.) Tsinghua University Press, 2013.
  29. Stuart Russell and Peter Norvig, Жасанды интеллект: Жаңашыл әдіс. (Kazakh translation of Artificial Intelligence: A Modern Approach, third edition.) Translated by M. E. Mansurova, K. S. Duisebekova, and S. Z. Sapakova. Almaty, Kazakhstan: Association of Higher Education Institutions of the Republic of Kazakhstan, 2013, 2014, 2016.
  30. Stuart Russell and Peter Norvig, 인공지능 : 현대적 접근방식(제 3판), Volume 1 and Volume 2. (Korean translation of Artificial Intelligence: A Modern Approach, third edition.) Seoul: J-pub Co., 2016.
  31. Stuart Russell, Human Compatible: AI and the Problem of Control . New York: Viking, 2019.
  32. Stuart Russell and Peter Norvig, ``Artificial Intelligence: A Modern Approach.'' 4th Edition, Pearson, 2020.
  33. Stuart Russell, Human Compatible: Künstliche Intelligenz und wie der Mensch die Kontrolle über superintelligente Maschinen behält. (German translation of Human Compatible.) Translated by Guido Lenz. Cologne: mitp Verlag, 2020.
  34. Stuart Russell, AI新生. (Chinese translation of Human Compatible.) Translated by Zhang Yi. Beijing: CITIC Press, 2020.
  35. Stuart Russell, Сумісний з людиною. Штучний інтелект і проблема контролю. (Ukrainian translation of Human Compatible.) Translated by Viktoria Zenhyea. Kiev: Bookchef, 2020.
  36. Stuart Russell, Совместимость: Как контролировать искусственный интеллект. (Russian translation of Human Compatible.) Moscow: Alpina, 2020.
  37. Stuart Russell, AI新生. (Japanese translation of Human Compatible.) Translated by Nobuhiko Matsui. Tokyo: Misuzu Shobo, 2021.
  38. Stuart Russell, 어떻게 인간과 공존하는 인공지능을 만들 것인가. (Korean translation of Human Compatible.) Translated by Lee Han-eum. Seoul: Gimm-Young, 2021.
  39. Stuart Russell, İnsanlık için Yapay Zekâ: Yapay Zekâ ve Kontrol Problemi. (Turkish translation of Human Compatible.) Translated by Barış Satılmış. Ankara: Buzdağı Yayınevi, 2021.
  40. Stuart Russell, Συμβατή με τον άνθρωπο. (Greek translation of Human Compatible.) Athens: Travlos Publications, 2021.
  41. Stuart Russell, Inteligência Artificial a Nosso Favor: como manter o controle sobre a tecnologia. (Portuguese translation of Human Compatible.) Translated by Berila Vargas and illustrated by Mateus Valadares. São Paulo, Brazil: Companhia das Letras, 2021.
  42. Stuart Russell, Jako člověk: Umělá inteligence a problém jejího ovládání. (Croatian translation of Human Compatible.) Translated by Jiří Zlatuška. Zagreb, Croatia: Planetopija, 2021.
  43. Stuart Russell and Peter Norvig, Intelligenza Artificiale 4/Ed. Vol. 1 - Un Approccio Moderno. (Vol. 1 of Italian translation of Artificial Intelligence: A Modern Approach, fourth edition.) Translated by Stefano Gaburri and Francesco Amigoni. Rome: Pearson Italia, 2021.
  44. Stuart Russell and Peter Norvig, Intelligenza Artificiale 4/Ed. Vol. 2 - Un Approccio Moderno. (Vol. 2 of Italian translation of Artificial Intelligence: A Modern Approach, fourth edition.) Translated by Stefano Gaburri and Francesco Amigoni. Rome: Pearson Italia, 2022.
  45. Stuart Russell and Peter Norvig, Intelligence artificielle, 4e éd.. (French translation of Artificial Intelligence: A Modern Approach, fourth edition.) Paris: Pearson Education France, 2022.
  46. Stuart Russell and Peter Norvig, Inteligencia Artificial: Uma Abordagem Moderna. (Portuguese translation of Artificial Intelligence: A Modern Approach, fourth edition.) Translated by Daniel Vieira and Flavio Soares Correa da Silva. Rio de Janeiro: GEN LTC, 2022.
  47. Stuart Russell and Peter Norvig, Künstliche Intelligenz: Ein moderner Ansatz (4th Edition). (German translation of Artificial Intelligence: A Modern Approach, fourth edition.) Munich: Verlag Pearson Studium, 2023.
  48. Stuart Russell, Human Compatible (revised edition). London: Penguin, 2023.

Journal papers

  1. Stuart Russell ``Rationality as an Explanation of Language?'' (commentary). Behavioral and Brain Sciences 10, 1987.
  2. Stuart Russell and Eric Wefald ``Principles of Metareasoning.'' Artificial Intelligence 49, 1991 (invited paper).
  3. Stuart Russell ``An Architecture for Bounded Rationality.'' SIGART Bulletin 2(4), 1991.
  4. Stuart Russell ``Prior Knowledge and Autonomous Learning.'' Journal of Robotics and Autonomous Systems 8, 1991.
  5. Stuart Russell ``Inductive Learning by Machines.'' Philosophical Studies 64(1), 1991.
  6. Stuart Russell and Devika Subramanian ``Provably bounded-optimal agents.'' Journal of Artificial Intelligence Research, 2, 1995 (invited paper).
  7. Shlomo Zilberstein and Stuart Russell ``Optimal composition of real-time systems.'' Artificial Intelligence, 82, 181-213, 1996.
  8. Stuart Russell, ``Rationality and Intelligence.'' Artificial Intelligence, 94, 57-77, 1997 (invited paper).
  9. John Binder, Daphne Koller, Stuart Russell, Keiji Kanazawa, ``Adaptive Probabilistic Networks with Hidden variables.'' Machine Learning, 29, 213-244, 1997 (invited paper).
  10. Stuart Russell, Lewis Stiller, and Othar Hansson, ``PNPACK: Computing with Probabilities in Java.'' Concurrency: Practice and Experience, 9, 1333-1339, 1997.
  11. Prasad Tadepalli and Stuart Russell, ``Learning from Examples and Membership Queries with Structured Determinations.'' Machine Learning, 32, 245-95, 1998.
  12. Tim Huang and Stuart Russell, ``Object Identification: A Bayesian Analysis with Application to Traffic Surveillance.'' Artificial Intelligence, 103, 1-17, 1998 (invited paper).
  13. Geoffrey Zweig and Stuart Russell, ``Probabilistic modeling with Bayesian networks for automatic speech recognition.'' Australian Journal of Intelligent Information Processing Systems, 5(4), 253-60, 1999 (invited paper).
  14. Songhwai Oh, Stuart Russell, and S. Shankar Sastry, ``Markov Chain Monte Carlo Data Association for Multi-Target Tracking.'' IEEE Transactions on Automatic Control, 54(3), 481-497, 2009.
  15. Ahilan Sivaganesan, Yusuf Erol, Geoffrey Manley, and Stuart Russell, ``Modeling and Machine Learning of Cerebrovascular Dynamics: A Framework for Monitoring Unmeasurable Patient Variables.'' Neurosurgery, 71(2), E559, 2012.
  16. Nimar S. Arora, Stuart Russell, and Erik Sudderth, ``NET-VISA: Network Processing Vertically Integrated Seismic Analysis.'' In Bulletin of the Seismological Society of America, 103(2A), 709-729, 2013.
  17. Stuart Russell, Unifying logic and probability. Communications of the ACM, 58(7), 88-97, 2015.
  18. Stuart Russell, Daniel Dewey, and Max Tegmark, Research Priorities for Robust and Beneficial Artificial Intelligence, AI Magazine, Vol. 36, No. 4, 2015.
  19. Hugh Chen, Yusuf Erol, Eric Shen, and Stuart Russell, Probabilistic model-based approach for heart beat detection.'' Physiological Measurement, 37(9), 1404-1421, 2016.
  20. Ronan Le Bras, Nimar Arora, Noriyuki Kushida, Pierrick Mialle, Istvan Bondar, Elena Tomuta, Fekadu Kebede Alamneh, Paulino Feitio, Marcela Villarroel, Beatriz Vera, Alexander Sudakov, Shaban Laban, Stuart Nippress, David Bowers, Stuart Russell, and Tammy Taylor, ``NET-VISA from Cradle to Adulthood. A Machine-Learning Tool for Seismo-Acoustic Automatic Association,'' Pure and Applied Geophysics, 178, 2437-2458, 2020.
  21. Paria Rashidinejad, Xiao Hu, and Stuart Russell, Patient-adaptable intracranial pressure morphology analysis using a probabilistic model-based approach.'' Physiological Measurement, 41(10), 104003.
  22. Stuart Russell, The history and future of AI, Oxford Review of Economic Policy, 37(3), 509-520, 2021.
  23. Stuart Russell, Banning Lethal Autonomous Weapons: An Education. Issues in Science and Technology, XXXVIII(3), 60-65, 2022.
  24. Stuart Russell, If we succeed. Daedalus, Spring 2022, 43-57.
  25. Kenji Doya, Arisa Ema, Hiroaki Kitano, Masamichi Sakagami, and Stuart Russell, Social impact and governance of AI and neurotechnologies. Neural Networks, 152, 542-554, 2022.
  26. Paria Rashidinejad, Banghua Zhu, Cong Ma, Jiantao Jiao, and Stuart Russell, Bridging Offline Reinforcement Learning and Imitation Learning: A Tale of Pessimism. IEEE Transactions on Information Theory, 68 (12), 8156-8196, 2022.
  27. Stuart Russell, AI weapons: Russia's war in Ukraine shows why the world must enact a ban. Nature, 614, 620-623, 2023. (21 February, 2023)
  28. Alistair Knott, Dino Pedreschi, Raja Chatila, Tapabrata Chakraborti, Susan Leavy, Ricardo Baeza-Yates, David Eyers, Andrew Trotman, Paul D. Teal, Przemyslaw Biecek, Stuart Russell, and Yoshua Bengio, Generative AI models should include detection mechanisms as a condition for public release. Ethics and Information Technology, 25, 2023. (prepublication version)
  29. Michael K. Cohen , Noam Kolt, Yoshua Bengio, Gillian K. Hadfield, And Stuart Russell, Regulating advanced artificial agents, Science, 384(6691), 36-38, 2024.
  30. Yoshua Bengio, Geoffrey Hinton, Andrew Yao, Dawn Song, Pieter Abbeel, Trevor Darrell, Yuval Noah Harari, Ya-Qin Zhang, Lan Xue, Shai Shalev-Shwartz, Gillian Hadfield, Jeff Clune, Tegan Maharaj, Frank Hutter, Atilim Baydin, Sheila Mcilraith, Qiqi Gao, Ashwin Acharya, David Krueger, Anca Dragan, Philip Torr, Stuart Russell, Daniel Kahneman, Jan Brauner, and Sören Mindermann, Managing extreme AI risks amid rapid progress, Science, 384(6698), 842-845, 2024.
  31. Brian Judge, Mark Nitzberg, and Stuart Russell, When code isn't law: rethinking regulation for artificial intelligence. Policy and Society, puae020, 2024.
  32. Alistair Knott, Dino Pedreschi, Toshiya Jitsuzumi, Susan Leavy, David Eyers, Tapabrata Chakraborti, Andrew Trotman, Sundar Sundareswaran, Ricardo Baeza-Yates, Przemyslaw Biecek, Adrian Weller, Paul D. Teal, Subhadip Basu, Mehmet Haklidir, Virginia Morini, Stuart Russell, and Yoshua Bengio, AI content detection in the emerging information ecosystem: New obligations for media and tech companies. Ethics and Information Technology, 26, 2024.

Refereed conference papers in published proceedings

  1. Stuart Russell ``A Quantitative Analysis of Analogy by Similarity.'' In Proceedings of the Fifth National Conference on Artificial Intelligence, Philadelphia, PA: Morgan Kaufmann, 1986.
  2. Stuart Russell ``Preliminary Steps Toward the Automation of Induction.'' In Proceedings of the Fifth National Conference on Artificial Intelligence, Philadelphia, PA: Morgan Kaufmann, 1986.
  3. Stuart Russell ``Analogy and Single-Instance Generalization.'' In Proceedings of the Fourth International Machine Learning Workshop, Irvine, CA: Morgan Kaufmann, 1987.
  4. Todd R. Davies and Stuart Russell ``A Logical Approach to Reasoning by Analogy.'' In Proceedings of the Tenth International Joint Conference on Artificial Intelligence, Milan, Italy: Morgan Kaufmann, 1987.
  5. Stuart Russell and Benjamin Grosof ``A Declarative Approach to Bias in Concept Learning.'' In Proceedings of the Sixth National Conference on Artificial Intelligence, Seattle, WA: Morgan Kaufmann, 1987.
  6. Michael Braverman and Stuart Russell ``Boundaries of Operationality.'' In Proceedings of the Fifth International Conference on Machine Learning, Ann Arbor, MI: Morgan Kaufmann, 1989.
  7. Michael Braverman and Stuart Russell ``IMEX: Overcoming Intractability in Explanation-Based Learning.'' In Proceedings of the Seventh National Conference on Artificial Intelligence, Minneapolis, MN: Morgan Kaufmann, 1988.
  8. Stuart Russell ``Tree-Structured Bias.'' In Proceedings of the Seventh National Conference on Artificial Intelligence, Minneapolis, MN: Morgan Kaufmann, 1988.
  9. Alice Agogino, Ramanathan Guha and Stuart Russell ``Sensor Fusion using Influence Diagrams and Reasoning by Analogy: Application to Milling Machine Monitoring and Control.'' In Proceedings of the Third International Conference on Applications of Artificial Intelligence in Engineering, Stanford, CA: Computational Mechanics Institute, 1988.
  10. Stuart Russell and Eric Wefald ``Principles of Meta-Reasoning.'' In Proceedings of the First International Conference on Principles of Knowledge Representation and Reasoning, Toronto, Ontario: Morgan Kaufmann, 1989.
  11. Stuart J. Russell ``Execution architectures and compilation.'' In Proceedings of the Eleventh International Joint Conference on Artificial Intelligence, Detroit, MI: Morgan Kaufmann, 1989.
  12. Stuart Russell and Eric Wefald ``On optimal game-tree search using rational metareasoning.'' In Proceedings of the Eleventh International Joint Conference on Artificial Intelligence, Detroit, MI: Morgan Kaufmann, 1989.
  13. Eric Wefald and Stuart Russell ``Adaptive Learning of Decision-Theoretic Search Control Knowledge.'' In Proceedings of the Sixth International Workshop on Machine Learning, Ithaca, NY: Morgan Kaufmann, 1989.
  14. Benjamin Grosof and Stuart Russell ``Declarative Bias for Structural Domains.'' In Proceedings of the Sixth International Workshop on Machine Learning, Ithaca, NY: Morgan Kaufmann, 1989.
  15. Sampath Srinivas, Stuart Russell, and Alice Agogino, ``Automated construction of sparse Bayesian networks from unstructured probabilistic models and domain information.'' In Proceedings of the Fifth Workshop on Uncertainty in Artificial Intelligence, Windsor, Ontario, 1989.
  16. Stuart Russell ``Fine-grained decision-theoretic search control.'' In Proceedings of the Sixth Conference on Uncertainty in Artificial Intelligence, Cambridge, MA: Morgan Kaufmann, 1990.
  17. Stuart Russell and Shlomo Zilberstein ``Composing Real-Time Systems.'' In Proceedings of the Twelfth International Joint Conference on Artificial Intelligence, Sydney, Australia: Morgan Kaufmann, 1991.
  18. Shlomo Zilberstein and Stuart Russell ``Efficient Resource-Bounded Reasoning in AT-RALPH.'' In Proceedings of the First International Conference on AI Planning Systems, College Park, Maryland: Morgan Kaufmann, 1992.
  19. Ronald Musick and Stuart Russell ``How Long Will It Take?'' In Proceedings of the Tenth National Conference on Artificial Intelligence, San Jose, CA: AAAI Press, 1992.
  20. Saso Dzeroski, Stephen Muggleton and Stuart Russell ``PAC-Learnability of Determinate Logic Programs.'' In Proceedings of the Fifth Annual ACM Workshop on Computational Learning Theory (COLT-92), Pittsburgh, PA: ACM Press, 1992.
  21. Stuart Russell ``Efficient Memory-Bounded Search Methods.'' In Proceedings of the Tenth European Conference on Artificial Intelligence, Vienna: Wiley, 1992.
  22. Saso Dzeroski, Stephen Muggleton and Stuart Russell ``PAC-Learnability of Constrained, Nonrecursive Logic Programs.'' In Proceedings of the Third International Workshop on Computational Learning Theory and Natural Learning Systems (CLNL-92), Madison, WI, 1992.
  23. Musick, R., Catlett, J. and Russell, S. ``An Efficient Method for Constructing Approximate Decision Trees for Large Databases.'' In Proceedings of the Tenth International Conference in Machine Learning, Amherst, MA, 1993.
  24. Gary Ogasawara and Stuart Russell ``Planning Using Multiple Execution Architectures.'' In Proceedings of the Thirteenth International Joint Conference on Artificial Intelligence, Chambery, France: Morgan Kaufmann, 1993.
  25. Stuart Russell and Devika Subramanian ``Provably bounded optimal agents.'' In Proceedings of the Thirteenth International Joint Conference on Artificial Intelligence, Chambery, France, 1993.
  26. S. Zilberstein and S. J. Russell. ``Anytime Sensing, Planning and Action: A Practical Model for Robot Control.'' In Proceedings of the Thirteenth International Joint Conference on Artificial Intelligence, Chambery, France, 1993.
  27. T. Huang, D. Koller, J. Malik, G. Ogasawara, B. Rao, S. Russell, and J. Weber. ``Automatic symbolic traffic scene analysis using belief networks.'' In Proceedings of the Twelfth National Conference on Artificial Intelligence, Seattle, WA, 1994.
  28. J. Tash and S. Russell ``Control strategies for a stochastic planner.'' In Proceedings of the Twelfth National Conference on Artificial Intelligence, Seattle, WA, 1994.
  29. D. Koller, J Weber, T. Huang, J. Malik, G. Ogasawara, B. Rao, and S. Russell, ``Towards Robust Automatic Traffic Scene Analysis in Real-Time.'' In Proceedings of the International Conference on Pattern Recognition, Israel, Nov. 1994.
  30. D. Koller, J Weber, T. Huang, J. Malik, G. Ogasawara, B. Rao, and S. Russell, ``Towards robust automatic traffic scene analysis in real-time.'' In Proceedings of the 33rd IEEE Conference on Decision and Control, Lake Buena Vista, Florida, Dec. 1994: IEEE Press.
  31. Stuart Russell, John Binder, Daphne Koller, and Keiji Kanazawa, ``Local learning in probabilistic networks with hidden variables.'' In Proceedings of the Fourteenth International Joint Conference on Artificial Intelligence, Montreal, Canada, 1995.
  32. Ron Parr and Stuart Russell, ``Approximating Optimal Policies for Partially Observable Stochastic Domains.'' In Proceedings of the Fourteenth International Joint Conference on Artificial Intelligence, Montreal, Canada, 1995.
  33. Jeff Forbes, Tim Huang, Keiji Kanazawa, and Stuart Russell, ``The BATmobile: Towards a Bayesian Automated Taxi.'' In Proceedings of the Fourteenth International Joint Conference on Artificial Intelligence, Montreal, Canada, 1995.
  34. Stuart Russell, ``Rationality and Intelligence.'' Invited paper (Computers and Thought Award), in Proceedings of the Fourteenth International Joint Conference on Artificial Intelligence, Montreal, Canada, 1995.
  35. Keiji Kanazawa, Daphne Koller, and Stuart Russell, ``Stochastic simulation algorithms for dynamic probabilistic networks.'' In Proceedings of the Eleventh Conference on Uncertainty in Artificial Intelligence, Montreal, Canada: Morgan Kaufmann, 1995.
  36. M. Wellman, C. Liu, D. Pynadath, S. Russell, J. Forbes, T. Huang, and K. Kanazawa. ``Decision-Theoretic Reasoning for Traffic Monitoring and Vehicle Control.'' In Proceedings of the Intelligent Vehicles '95 Symposium, Detroit, Michigan, September 1995.
  37. Timothy Huang and Stuart Russell, ``Object identification in a Bayesian context.'' Distinguished Paper Prize, in Proceedings of the Fifteenth International Joint Conference on Artificial Intelligence, Nagoya, Japan, 1997.
  38. John Binder, Kevin Murphy, Stuart Russell, ``Space-Efficient Inference in Dynamic Probabilistic Networks.'' In Proceedings of the Fifteenth International Joint Conference on Artificial Intelligence, Nagoya, Japan, 1997.
  39. Nir Friedman, Moises Goldszmidt, David Heckerman, Stuart Russell, ``Where is the Impact of Bayesian Networks in Learning?'' In Proceedings of the Fifteenth International Joint Conference on Artificial Intelligence, Nagoya, Japan, 1997.
  40. Nir Friedman and Stuart Russell, ``Image Segmentation in Video Sequences.'' In Proceedings of the Thirteenth Conference on Uncertainty in Artificial Intelligence, Providence, Rhode Island: Morgan Kaufmann, 1997.
  41. Ron Parr and Stuart Russell, ``Reinforcement Learning with Hierarchies of Machines.'' In Advances in Neural Information Processing Systems 10, MIT Press, 1998.
  42. Nir Friedman, Kevin Murphy, and Stuart Russell, ``Learning the Structure of Dynamic Probabilistic Networks.'' In Proceedings of the Conference on Automated Learning and Discovery, Pittsburgh, June 1998.
  43. Geoff Zweig and Stuart Russell, ``Speech Recognition with Dynamic Bayesian Networks.'' In Proceedings of the Fifteenth National Conference on Artificial Intelligence, Madison, Wisconsin: AAAI Press, 1998.
  44. R. Dearden, N. Friedman, and S. Russell, ``Bayesian Q-Learning.'' In Proceedings of the Fifteenth National Conference on Artificial Intelligence, Madison, Wisconsin: AAAI Press, 1998.
  45. N. Friedman, K. Murphy, and S. Russell, ``Learning the Structure of Dynamic Probabilistic Networks.'' In Proceedings of the Fourteenth Conference on Uncertainty in Artificial Intelligence, Madison, Wisconsin: Morgan Kaufmann, 1998.
  46. S. Russell, ``Learning agents for uncertain environments (extended abstract).'' Invited paper, in Proceedings of the Eleventh Annual ACM Workshop on Computational Learning Theory (COLT-98), Madison, Wisconsin: ACM Press, 1998.
  47. G. Zweig and S. Russell, ``Probabilistic Modeling with Bayesian Networks for ASR.'' In Proceedings of the International Conference on Spoken Language Processing, Sydney, Australia: IEEE Press, 1998.
  48. Andrew Y. Ng, Daishi Harada, and Stuart Russell, ``Policy invariance under reward transformations: Theory and application to reward shaping.'' In Proceedings of the Sixteenth International Conference on Machine Learning, Bled, Slovenia: Morgan Kaufmann, 1999.
  49. Vassilis Papavassiliou and Stuart Russell, ``Convergence of reinforcement learning with general function approximators.'' In Proceedings of the Sixteenth International Joint Conference on Artificial Intelligence, Stockholm: Morgan Kaufmann, 1999.
  50. Hanna Pasula, Stuart Russell, Michael Ostland, and Ya'acov Ritov, ``Tracking many objects with many sensors.'' In Proceedings of the Sixteenth International Joint Conference on Artificial Intelligence, Stockholm: Morgan Kaufmann, 1999.
  51. Stuart Russell, ``Expressive probability models for speech recognition and understanding.'' In Proc. International Workshop on Automatic Speech Recognition and Understanding (ASRU), Keystone, Colorado, 1999 (invited paper).
  52. Stuart Russell, ``Expressive probability models in science.'' In Proceedings of the Second International Conference on Discovery Science, Tokyo, Japan: Springer Verlag, 1999 (invited paper).
  53. Andrew Y. Ng and Stuart Russell, ``Algorithms for inverse reinforcement learning.'' In Proceedings of the Seventeenth International Conference on Machine Learning, Stanford, California: Morgan Kaufmann, 2000.
  54. Arnaud Doucet, Nando de Freitas, Kevin Murphy, and Stuart Russell, ``Rao-Blackwellised Particle Filtering for Dynamic Bayesian Networks.'' In Proceedings of the Sixteenth Conference on Uncertainty in Artificial Intelligence , Stanford, California: Morgan Kaufmann, 2000.
  55. David Andre and Stuart Russell, ``Programmable Reinforcement Learning Agents.'' In Advances in Neural Information Processing Systems 13, MIT Press, 2001.
  56. Nikunj Oza and Stuart Russell, ``Online Bagging and Boosting.'' In Eighth International Workshop on Artificial Intelligence and Statistics, Key West, Florida. 2001
  57. Nikunj Oza and Stuart Russell, ``Experimental Comparisons of Online and Batch Versions of Bagging and Boosting.'' In Proc. KDD-01, San Francisco, 2001.
  58. Stuart Russell, ``Identity uncertainty.'' In Proc. IFSA-01, Vancouver, 2001. (Invited paper)
  59. Joao de Freitas, Pedro Hoejen-Soerensen, Michael Jordan, and Stuart Russell, ``Variational MCMC.'' In Proc. UAI-01, Seattle, 2001.
  60. Hanna Pasula and Stuart Russell, ``Approximate inference for first-order probabilistic languages.'' In Proc. IJCAI-01, Seattle, 2001.
  61. Bhaskara Marthi, Hanna Pasula, Stuart Russell, Yuval Peres, ``Decayed MCMC Filtering.'' In Proc. UAI-02, Edmonton, Alberta: Morgan Kaufmann, 2002.
  62. David Andre and Stuart Russell, ``State Abstraction for Programmable Reinforcement Learning Agents.'' In Proc. AAAI-02, Edmonton, Alberta: AAAI Press, 2002.
  63. Eric P. Xing, Andrew Y. Ng, Michael I. Jordan, and Stuart Russell, ``Distance Metric Learning, with application to Clustering with side-information.'' In Advances in Neural Information Processing Systems 15, MIT Press, 2003.
  64. Hanna Pasula, Bhaskara Marthi, Brian Milch, Stuart Russell, and Ilya Shpitser, ``Identity Uncertainty and Citation Matching.'' In Advances in Neural Information Processing Systems 15, MIT Press, 2003.
  65. Eric P.Xing, Michael I. Jordan, Richard M. Karp, and Stuart Russell, ``A Hierarchical Bayesian Markovian Model for Motifs in Biopolymer Sequences.'' In Advances in Neural Information Processing Systems 15, MIT Press, 2003.
  66. Eyal Amir and Stuart Russell, ``Temporal Logical Filtering--Preliminary Results.'' In Proc. Common Sense 2003, Stanford, CA, 2003.
  67. Eyal Amir and Stuart Russell, ``Logical Filtering.'' In Proc. IJCAI-03, Acapulco, Mexico, 2003.
  68. Stuart Russell and Andrew Zimdars, ``Q-Decomposition for Reinforcement Learning Agents.'' In Proc. ICML-03, Washington, DC, 2003.
  69. Greg Lawrence, Noah Cowan, and Stuart Russell, ``Efficient Gradient Estimation for Motor Control Learning.'' In Proc. UAI-03, Acapulco, Mexico, 2003.
  70. Eric P. Xing, Michael I. Jordan, and Stuart Russell, ``A generalized mean field algorithm for variational inference in exponential families.'' In Proc. UAI-03, Acapulco, Mexico, 2003.
  71. Eric Xing, Michael Jordan, and Stuart Russell, ``Graph partition strategies for generalized mean field inference.'' In Proc. UAI-04, Banff, Alberta, 2004.
  72. Songhwai Oh, Stuart Russell, and Shankar Sastry, ``Markov Chain Monte Carlo Data Association for General Multiple Target Tracking Problems.'' In Proc. 43rd IEEE Conference on Decision and Control (CDC-04), Paradise Island, Bahamas, 2004.
  73. Brian Milch, Bhaskara Marthi, David Sontag, Stuart Russell, Daniel L. Ong and Andrey Kolobov, ``Approximate Inference for Infinite Contingent Bayesian Networks.'' In Proc. Tenth International Workshop on Artificial Intelligence and Statistics, Barbados, 2005.
  74. Brian Milch, Bhaskara Marthi, David Sontag, Stuart Russell, Daniel L. Ong and Andrey Kolobov, ``BLOG: Probabilistic Models with Unknown Objects.'' In Proc. IJCAI-05, Edinburgh, Scotland, 2005.
  75. Stuart Russell and Jason Wolfe, ``Efficient belief-state AND-OR search, with application to Kriegspiel.'' In Proc. IJCAI-05, Edinburgh, Scotland, 2005.
  76. Bhaskara Marthi, Stuart Russell, David Latham, and Carlos Guestrin, ``Concurrent hierarchical reinforcement learning.'' In Proc. IJCAI-05, Edinburgh, Scotland, 2005.
  77. Brian Milch and Stuart Russell, ``General-Purpose MCMC Inference over Relational Structures.'' In Proc. UAI-06, Cambridge, MA, 2006.
  78. Bhaskara Marthi and Stuart Russell, ``A Compact, Hierarchical Q-Function Decomposition.'' In Proc. UAI-06, Cambridge, MA, 2006.
  79. T. K. Satish Kumar and Stuart Russell, ``On Some Tractable Cases of Logical Filtering.'' In Proceedings of the Sixteenth International Conference on Automated Planning and Scheduling (ICAPS 2006), Ambleside, UK, 2006.
  80. Brian Milch and Stuart Russell, ``First-Order Probabilistic Languages: Into the Unknown.'' In ILP: Proceedings of the 16th International Conference on Inductive Logic Programming. Berlin: Springer, 2007.
  81. B. Marthi, S. J. Russell, and J. Wolfe, ``Angelic Semantics for High-Level Actions.'' In Proceedings of the Seventeenth International Conference on Automated Planning and Scheduling (ICAPS 2007), Providence, Rhode Island, 2007.
  82. Gregory Lawrence and Stuart Russell, ``Improving Gradient Estimation by Incorporating Sensor Data.'' In Proceedings of the 24th International Conference on Uncertainty in Artificial Intelligence (UAI-08), Helsinki, 2008.
  83. Bhaskara Marthi, Stuart Russell, and Jason Wolfe, ``Angelic Hierarchical Planning: Optimal and Online Algorithms.'' In Proceedings of the Eighteenth International Conference on Automated Planning and Scheduling (ICAPS 2008), Sydney, 2008.
  84. Norm Aleks, Stuart Russell, Michael G. Madden, Kristan Staudenmayer, Mitchell Cohen, Diane Morabito, and Geoffrey Manley, ``Probabilistic detection of short events, with application to critical care monitoring.'' In Advances in Neural Information Processing Systems 21, MIT Press, 2009.
  85. Emma Brunskill and Stuart Russell, ``RAPID: A Reachable Anytime Planner for Imprecisely-sensed Domains.'' In Proc. 26th Conference on Uncertainty in Artificial Intelligence (UAI 2010), Catalina Island, California, 2010.
  86. Nimar Arora, Stuart Russell, Rodrigo de Salvo Braz, and Erik Sudderth, ``Gibbs sampling in open-universe stochastic languages.'' In Proc. 26th Conference on Uncertainty in Artificial Intelligence (UAI 2010), Catalina Island, California, 2010.
  87. Shaunak Chatterjee and Stuart Russell, ``Why are DBNs sparse?.'' In Proc. Thirteenth International Conference on Artificial Intelligence and Statistics, Sardinia, 2010.
  88. Ronan Le Bras, Sheila Vaidya, Jeffrey Schneider, Stuart Russell, and Nimar Arora, ``Status of the Machine Learning Efforts at the International Data Centre of the CTBTO.'' In Proc. Monitoring Research Review (MRR 2010), Orlando, Florida, 2010.
  89. Jason Wolfe, Bhaskara Marthi, and Stuart Russell, ``Combined Task and Motion Planning for Mobile Manipulation.'' In Proceedings of the Twentieth International Conference on Automated Planning and Scheduling (ICAPS 2010), Toronto, 2010.
  90. Nimar S. Arora, Stuart J. Russell, Paul Kidwell, and Erik Sudderth, ``Global seismic monitoring as probabilistic inference.'' In Advances in Neural Information Processing Systems 23, MIT Press, 2011.
  91. Ronan Le Bras, Stuart Russell, Nimar Arora, and Vera Miljanovic, ``Machine Learning at the CTBTO. Testing and evaluation of the False Events Identification (FEI) and Vertically Integrated Seismic Association (VISA) project.'' In Proc. Monitoring Research Review (MRR 2011), Tucson, Arizona, 2011.
  92. Stuart J. Russell, Stephen C. Myers, Nimar S. Arora, David A. Moore, and Erik Sudderth, ``Bayesian Treaty Monitoring: Preliminary Report.'' In Proc. Monitoring Research Review (MRR 2011), Tucson, Arizona, 2011.
  93. Shaunak Chatterjee and Stuart Russell, ``A temporally abstracted Viterbi algorithm.'' In Proc. UAI-11, Barcelona, 2011.
  94. Nimar S. Arora, Stuart J. Russell, Paul Kidwell, and Erik Sudderth, ``Global seismic monitoring: A Bayesian approach.'' In Proc. AAAI-11, San Francisco, 2011.
  95. Jason Wolfe and Stuart Russell, ``Bounded Intention Planning.'' In Proc. IJCAI-11, Barcelona, 2011.
  96. Emma Brunskill and Stuart Russell, ``Partially observable sequential decision making for problem selection in an intelligent tutoring system.'' In Proc. International Conference on Educational Data Mining (EDM), 2011.
  97. Nicholas Hay, Stuart Russell, Solomon Eyal Shimony, and David Tolpin, ``Selecting Computations: Theory and Applications.'' In Proc. UAI-12, Catalina Island, 2012.
  98. Shaunak Chatterjee and Stuart Russell, ``Uncertain observation times.'' In Proc. 6th International Conference on Scalable Uncertainty Management (SUM-12), Marburg, Germany, 2012.
  99. David A. Moore, Kevin Mayeda, Steve Myers, Min Joon Seo, and Stuart Russell, ``Progress in Signal-Based Bayesian Monitoring.'' In Proc. Monitoring Research Review (MRR 2012), Albuquerque, New Mexico, 2012.
  100. Nimar S. Arora, Jeffrey Given, Elena Tomuta, Stuart Russell, and Spilios Spiliopoulos, ``Analyst Evaluation of NET-VISA (Network Processing Vertically Integrated Seismic Analysis) at the CTBTO.'' In Proc. Monitoring Research Review (MRR 2012), Albuquerque, New Mexico, 2012.
  101. Lei Li, Bharath Ramsundar, and Stuart Russell, ``Dynamic Scaled Sampling for Deterministic Constraints.'' In Proc. Sixteenth International Conference on Artificial Intelligence and Statistics, Scottsdale, Arizona, 2013.
  102. Yusuf B. Erol, Lei Li, Bharath Ramsundar, and Stuart Russell, ``The Extended Parameter Filter.'' In Proc. Thirtieth International Conference on Machine Learning, Atlanta, 2013.
  103. Sharad Vikram, Lei Li, and Stuart J. Russell, ``Writing and sketching in the air, recognizing and controlling on the fly.'' In CHI Extended Abstracts, Paris, 2013.
  104. Mark Rogers, Lei Li, and Stuart Russell, ``Multilinear Dynamical Systems for Tensor Time Series.'' In Advances in Neural Information Processing Systems 23, MIT Press, 2014.
  105. Siddharth Srivastava, Eugene Fang, Lorenzo Riano, Rohan Chitnis, Stuart Russell, and Pieter Abbeel, ``Combined Task and Motion Planning Through an Extensible Planner-Independent Interface Layer.'' In Proc. ICRA-14, Hong Kong, 2014.
  106. Siddharth Srivastava, Stuart Russell, and Paul Ruan, ``First-Order Open-Universe POMDPs.'' In Proc. UAI-14, Quebec City, Canada, 2014.
  107. David Moore and Stuart Russell, ``Fast Gaussian Process Posteriors with Product Trees.'' In Proc. UAI-14, Quebec City, Canada, 2014.
  108. Stuart Russell, ``Unifying Logic and Probability: A New Dawn for AI?'' (Invited paper.) In Proc. IPMU-14, Montpellier, France, 2014.
  109. Yusuf Erol, Romi Phadte, Sammy Sidhu, Claire Asselstine, David Phillips, and Stuart Russell, ``Model-Based Probabilistic Inference for Intensive Care Medicine.'' In Proc. Fifth Conference on Meaningful Use of Complex Medical Data, Los Angeles, 2015.
  110. F. Lieder, D. Plunkett, J. Hamrick, S. Russell, N. Hay, T. Griffiths, Algorithm selection by rational metareasoning as a model of human strategy selection. In Advances in Neural Information Processing Systems 23, MIT Press, 2015.
  111. Siddharth Srivastava, Shlomo Zilberstein, Abhishek Gupta, Pieter Abbeel, Stuart Russell, Tractability of Planning with Loops. In Proc. AAAI-15, Austin, Texas, 2015.
  112. Dylan Hadfield-Menell and Stuart Russell, Multitasking: Efficient Optimal Planning for Bandit Superprocesses. In Proc. UAI-15, 2015.
  113. Wei Wang and Stuart Russell, A Smart-Dumb/Dumb-Smart Algorithm for Efficient Split-Merge MCMC. In Proc. UAI-15, 2015.
  114. David Moore and Stuart Russell, Gaussian Process Random Fields. In Advances in Neural Information Processing Systems 24, MIT Press, 2016.
  115. Siddharth Srivastava, Stuart Russell, and Alessandro Pinto, Metaphysics of Planning Domain Descriptions. In Proc. AAAI-16, Phoenix, 2016.
  116. Aijun Bai, Siddharth Srivastava, and Stuart Russell, Markovian State and Action Abstractions via Hierarchical MCTS. In Proc. IJCAI-16, New York, 2016.
  117. Yi Wu, Lei Li, Stuart Russell, and Rastislav Bodik, Swift: Compiled Inference for Probabilistic Programming Languages. In Proc. IJCAI-16, New York, 2016.
  118. Stuart Russell, Ole Torp Lassen, Justin Uang, and Wei Wang, The Physics of Text: Ontological Realism in Information Extraction. In Proc. AKBC-16 (Automated Knowledge Base Construction), San Diego, 2016.
  119. Dylan Hadfield-Menell, Christopher Lin, Rohan Chitnis, Stuart Russell, and Pieter Abbeel, Sequential Quadratic Programming for Task Plan Optimization, In Proc. IROS-16, Daejeon, Korea, 2016.
  120. Dylan Hadfield-Menell, Anca Dragan, Pieter Abbeel, and Stuart Russell, Cooperative Inverse Reinforcement Learning. In Proc. NeurIPS-16, Barcelona, 2016.
  121. David Moore and Stuart Russell, ``Signal-Based Bayesian Seismic Monitoring.'' In Proc. Twentieth International Conference on Artificial Intelligence and Statistics, Fort Lauderdale, Florida, 2017.
  122. Aijun Bai and Stuart Russell, ``Speeding up HAM learning with internal transitions.'' In Proc. Third Multidisciplinary Conference on Reinforcement Learning and Decision Making, Ann Arbor, Michigan, 2017.
  123. Yusuf B. Erol, Yi Wu, Lei Li, and Stuart Russell, A Nearly-Black-Box Online Algorithm for Joint Parameter and State Estimation in Temporal Models. In Proc. AAAI-17, San Francisco, 2017.
  124. Smitha Milli, Dylan Hadfield-Menell, Anca Dragan, and Stuart Russell, ``Should Robots be Obedient?.'' In Proc. IJCAI-17, Melbourne, 2017. Also on arXiv.
  125. Dylan Hadfield-Menell, Anca Dragan, Pieter Abbeel, and Stuart Russell, ``The off-switch game.'' In Proc. IJCAI-17, Melbourne, 2017.
  126. Aijun Bai and Stuart Russell, ``Efficient Reinforcement Learning with Hierarchies of Machines by Leveraging Internal Transitions.'' In Proc. IJCAI-17, Melbourne, 2017.
  127. Yi Wu, David Bamman, and Stuart Russell, ``Adversarial Training for Relation Extraction,'' In Proc. EMNLP-17, Copenhagen, 2017.
  128. Dylan Hadfield-Menell, Smitha Milli, Pieter Abbeel, Stuart Russell, Anca Dragan, ``Inverse Reward Design.'' In Proc. NeurIPS-17, Long Beach, 2017.
  129. Nicholas Hay, Siddharth Srivastava, Yi Wu, and Stuart Russell, ``Discrete-Continuous Mixtures in Probabilistic Programming: Extended Semantics and General Inference Algorithms.'' In Proc. ICML-18, Stockholm, 2018.
  130. Malayandi Palaniappan, Dhruv Malik, Jaime Fisac, Dylan Hadfield-Menell, Anca Dragan, and Stuart Russell, ``An Efficient, Generalized Bellman Update For Cooperative Inverse Reinforcement Learning.'' In Proc. ICML-18, Stockholm, 2018.
  131. Thanard Kurutach, Aviv Tamar, Ge Yang, Stuart Russell, and Pieter Abbeel, ``Learning Plannable Representations with Causal InfoGAN.'' In Proc. NeurIPS-18, Montreal, 2018.
  132. Tongzhou Wang, Yi Wu, David Moore, and Stuart Russell, ``Meta-Learning MCMC Proposals.'' In Proc. NeurIPS-18, Montreal, 2018.
  133. Andrew Critch, Nishant Desai, and Stuart Russell, ``Negotiable Reinforcement Learning for Pareto Optimal Sequential Decision-Making.'' In Proc. NeurIPS-18, Montreal, 2018.
  134. Shihui Li, Yi Wu, Xinyue Cui, Honghua Dong, Fei Fang, and Stuart Russell, ``Robust Multi-Agent Reinforcement Learning via Minimax Deep Deterministic Policy Gradient. In Proc. AAAI-19, Honolulu, 2019.
  135. Joshua Peterson, David Bourgin, Daniel Reichman, Thomas Griffiths, and Stuart Russell, ``Cognitive model priors for predicting human decisions.'' In Proc. ICML-19, Long Beach, California, 2019. (See also video of presentation.)
  136. Yi Wu, Yuxin Wu, Aviv Tamar, Stuart Russell, Georgia Gkioxari, and Yuandong Tian, ``Bayesian Relational Memory for Semantic Visual Navigation.'' In Proc. ICCV-19, Seoul, 2019.
  137. Adam Gleave, Michael Dennis, Neel Kant, Cody Wild, Sergey Levine and Stuart Russell, ``Adversarial Policies: Attacking Deep Reinforcement Learning.'' In Proc. ICLR-20, Addis Ababa, 2020.
  138. Paria Rashidinejad, Jiantao Jiao, and Stuart Russell, ``SLIP: Learning to predict in unknown dynamical systems with long-term memory.'' In Advances in Neural Information Processing Systems 33, 2021. (Proceedings of NeurIPS-20.)
  139. Michael Dennis, Natasha Jaques, Eugene Vinitsky, Alexandre Bayen, Stuart Russell, Andrew Critch, and Sergey Levine, ``Emergent Complexity and Zero-shot Transfer via Unsupervised Environment Design.'' In Advances in Neural Information Processing Systems 33, 2021. (Proceedings of NeurIPS-20.)
  140. Sam Toyer, Rohin Shah, Andrew Critch, and Stuart Russell, ``The MAGICAL Benchmark for Robust Imitation.'' In Advances in Neural Information Processing Systems 33, 2021. (Proceedings of NeurIPS-20.)
  141. Prasad Tadepalli and Stuart Russell, PAC-Learning of Causal Trees with Latent Variables. In Proc. AAAI-21, 2021.
  142. Adam Gleave, Michael Dennis, Shane Legg, Stuart Russell and Jan Leike, ``Quantifying Differences in Reward Functions.'' In Proc. ICLR-21, 2021.
  143. George Matheos, Alexander K. Lew, Matin Ghavamizadeh, Stuart Russell, Marco Cusumano-Towner, Vikash K. Mansinghka, ``Transforming Worlds: Automated Involutive MCMC for Open-Universe Probabilistic Models.'' In Proc. 3rd Symposium on Advances in Approximate Bayesian Inference (AABI), 2021.
  144. Charlotte Roman, Michael Dennis, Andrew Critch, and Stuart Russell. Accumulating Risk Capital Through Investing in Cooperation. In Proc. AAMAS-21.
  145. Micah Carroll, Dylan Hadfield-Menell, Stuart Russell, and Anca Dragan, Estimating and Penalizing Induced Preference Shifts in Recommender Systems. In Proc. 15th ACM Conference on Recommender Systems, 2021.
  146. Tianjun Zhang, Paria Rashidinejad, Jiantao Jiao, Yuandong Tian, Joseph E. Gonzalez, and Stuart Russell, MADE: Exploration via Maximizing Deviation from Explored Regions . In Advances in Neural Information Processing Systems 34, 2022. (Proceedings of NeurIPS-21.)
  147. Paria Rashidinejad, Banghua Zhu, Cong Ma, Jiantao Jiao, and Stuart Russell, Bridging Offline Reinforcement Learning and Imitation Learning: A Tale of Pessimism. In Advances in Neural Information Processing Systems 34, 2022. (Proceedings of NeurIPS-21.)
  148. Cassidy Laidlaw and Stuart Russell, Uncertain Decisions Facilitate Better Preference Learning. In Advances in Neural Information Processing Systems 34, 2022. (Proceedings of NeurIPS-21.)
  149. Arnaud Fickinger, Hengyuan Hu, Brandon Amos, Stuart Russell, and Noam Brown, Scalable Online Planning via Reinforcement Learning Fine-Tuning. In Advances in Neural Information Processing Systems 34, 2022. (Proceedings of NeurIPS-21.)
  150. Cynthia Chen, Sam Toyer, Cody Wild, Scott Emmons, Ian Fischer, Kuang-Huei Lee, Neel Alex, Steven Wang, Ping Luo, Stuart Russell, Pieter Abbeel, and Rohin Shah, An Empirical Investigation of Representation Learning for Imitation. In Advances in Neural Information Processing Systems 34, 2022. (Proceedings of NeurIPS-21, Datasets and Benchmarks.)
  151. Arnaud Fickinger, Samuel Cohen, Stuart Russell, and Brandon Amos, Cross-Domain Imitation Learning via Optimal Transport. In Proc. ICLR-22, 2022.
  152. Scott Emmons, Caspar Oesterheld, Andrew Critch, Vincent Conitzer, and Stuart Russell, For Learning in Symmetric Teams, Local Optima are Global Nash Equilibria. In Proc. ICML-22, 2022.
  153. Micah Carroll, Dylan Hadfield-Menell, Stuart Russell, and Anca Dragan, Estimating and Penalizing Induced Preference Shifts in Recommender Systems. In Proc. ICML-22, 2022.
  154. Samer B. Nashed, Justin Svegliato, Abhinav Bhatia, Stuart Russell, and Shlomo Zilberstein, Selecting the Partial State Abstractions of MDPs: A Metareasoning Approach with Deep Reinforcement Learning. In Proc. IROS-22, 2022.
  155. Alexander Lew, George Matheos, Matin Ghavamizadeh, Nishad Gothoskar, Stuart Russell, and Vikash Mansinghka, SMCP3: SMC with Probabilistic Program Proposals. In Proc. Twenty-Sixth International Conference on Artificial Intelligence and Statistics, Valencia, Spain, 2023.
  156. Paria Rashidinejad, Hanlin Zhu, Kunhe Yang, Stuart Russell, and Jiantao Jiao, Optimal conservative offline RL with general function approximation via augmented Lagrangian. In Proc. ICLR-23, 2023.
  157. Joar Skalse, Matthew Farrugia-Roberts, Stuart Russell, Alessandro Abate, and Adam Gleave, Invariance in policy optimisation and partial identifiability in reward learning. In Proc. ICML-23, 2023.
  158. Tony Tong Wang, Adam Gleave, Tom Tseng, Nora Belrose, Kellin Pelrine, Joseph Miller, Michael D Dennis, Yawen Duan, Viktor Pogrebniak, Sergey Levine, and Stuart Russell, Adversarial policies beat superhuman Go AIs. In Proc. ICML-23, 2023.
  159. Niklas Lauffer, Ameesh Shah, Micah Carroll, Michael D Dennis, Stuart Russell, Who needs to know? Minimal knowledge for optimal coordination. In Proc. ICML-23, 2023.
  160. Mason Nakamura, Justin Svegliato, Samer B Nashed, Shlomo Zilberstein, and Stuart Russell, Formal Composition of Robotic Systems as Contract Programs. In Proc. IROS-23, 2023.
  161. Cassidy Laidlaw, Stuart Russell, and Anca Dragan, Bridging RL Theory and Practice with the Effective Horizon, In Proc. NeurIPS-23, 2023.
  162. Sam Toyer, Olivia Watkins, Ethan Adrian Mendes, Justin Svegliato, Luke Bailey, Tiffany Wang, Isaac Ong, Karim Elmaaroufi, Pieter Abbeel, Trevor Darrell, Alan Ritter, and Stuart Russell, Tensor Trust: Interpretable Prompt Injection Attacks from an Online Game. In Proc. ICLR-24, 2024.
  163. Cassidy Laidlaw, Banghua Zhu, Stuart Russell, and Anca Dragan, The Effective Horizon Explains Deep RL Performance in Stochastic Environments. In Proc. ICLR-24, 2024.
  164. Hanlin Zhu, Baihe Huang, and Stuart Russell, On Representation Complexity of Model-based and Model-free Reinforcement Learning. In Proc. ICLR-24, 2024.
  165. Qingyuan Lu, Justin Svegliato, Samer B. Nashed, Shlomo Zilberstein, and Stuart Russell, Ethically Compliant Autonomous Systems under Partial Observability. In Proc. ICRA-24, 2024.
  166. Micah Carroll, Davis Foote, Anand Siththaranjan, Stuart Russell, and Anca Dragan, AI Alignment with Changing and Influenceable Reward Functions. In Proc. ICML-24, 2024.
  167. Luke Bailey, Euan Ong, Stuart Russell, and Scott Emmons, Image Hijacks: Adversarial Images can Control Generative Models at Runtime. In Proc. ICML-24, 2024.
  168. Vincent Conitzer, Rachel Freedman, Jobstq Heitzig, Wesley H. Holliday, Bob Jacobs, Nathan Lambert, Milan Mosse, Eric Pacuit, Stuart Russell, Hailey Schoelkopf, Emanuel Tewolde, and William Zwicker, Social Choice for AI Ethics and Safety. In Proc. ICML-24, 2024.

Refereed conference papers in non-archival proceedings

  1. Stuart Russell and Eric Wefald ``Multi-Level Decision-Theoretic Search.'' In Proceedings of the AAAI Symposium on Computer Game-Playing, Stanford, March, 1988.
  2. Michael Braverman and Stuart Russell ``Explanation-Based Learning in Complex Domains.'' In Proceedings of the AAAI Symposium on Explanation-Based Learning, Stanford, March, 1988.
  3. Stuart Russell and Devika Subramanian ``Mutual Constraints on Representation and Inference.'' In Proceedings of the International Workshop on Machine Learning, Meta-Reasoning and Logics, Sesimbra, Portugal, 1988.
  4. Stuart Russell and Benjamin Grosof ``A Sketch of Autonomous Learning using Declarative Bias.'' In Proceedings of the International Workshop on Machine Learning, Meta-Reasoning and Logics, Sesimbra, Portugal, 1988.
  5. Benjamin Grosof and Stuart Russell ``Shift of Bias as Nonmonotonic Reasoning.'' In Proceedings of the International Workshop on Machine Learning, Meta-Reasoning and Logics, Sesimbra, Portugal, 1988.
  6. Eric Wefald and Stuart Russell, ``Estimating the value of computation: The case of real-time search.'' In Proceedings of the AAAI Symposium on AI and Limited Rationality, Stanford, March, 1989.
  7. Othar Hansson, Andrew Mayer, and Stuart Russell, ``Decision-theoretic planning in BPS.'' In Proceedings of the AAAI Symposium on Planning in Uncertain Environments, Stanford, March, 1990.
  8. Stuart Russell ``An Architecture for Bounded Rationality.'' In Proceedings of the AAAI Symposium on Integrated Architectures for Intelligent Agents, Stanford, March, 1991.
  9. Stuart Russell ``An Architecture for Bounded Rationality.'' In Proceedings of the IJCAI Workshop on Theoretical and Practical Design of Rational Agents, Sydney, August, 1991.
  10. Shlomo Zilberstein and Stuart Russell ``Reasoning about optimal allocation of time using conditional performance profiles.'' In Proceedings of the AAAI-92 Workshop on Implementations of Temporal Reasoning, San Jose, CA, July, 1992.
  11. Shlomo Zilberstein and Stuart Russell ``Control of Mobile Robots Using Anytime Computation.'' In Proceedings of the AAAI Fall Symposium on Applications of Artificial Intelligence to Real-World Autonomous Mobile Robots, Cambridge, MA, October, 1992.
  12. Shlomo Zilberstein and Stuart Russell ``Constructing utility-driven real-time systems using anytime algorithms.'' Proceedings of the IEEE Workshop on Imprecise and Approximate Computation, Phoenix, AZ, December, 1992.
  13. Gary Ogasawara and Stuart Russell ``Decision-theoretic planning with multiple execution architectures.'' Proceedings of the AAAI Spring Symposium on AI Planning, Stanford, CA, March 1993.
  14. Stuart Russell and Devika Subramanian ``Constructing bounded optimal systems.'' In Proceedings of the AAAI Spring Symposium on AI and NP-hard problems, Stanford, CA, March 1993.
  15. Brenda Barbour and Stuart Russell ``Experiments in Adaptive Indexing for Logic Programming.'' In Proceedings of the ICML-93 Workshop on Knowledge Compilation and Speedup Learning, Amherst, MA, June 1993.
  16. Tim Huang, Gary Ogasawara, and Stuart Russell ``Symbolic Traffic Scene Analysis Using Belief Networks.'' In Proceedings of the AAAI Workshop on AI in Intelligent Vehicle and Highway Systems, Washington, DC, 1993.
  17. Scott Davies and Stuart Russell, ``NP-completeness of searches for smallest possible feature sets.'' In Proceedings of the AAAI Fall Symposium on Relevance, New Orleans, Nov. 1994.
  18. Stuart Russell and Peter Norvig, ``A Modern, Agent-Oriented Approach to AI Instruction.'' In Proceedings of the AAAI Fall Symposium on Innovative Instruction for Introductory AI, New Orleans, Nov. 1994.
  19. Daishi Harada and Stuart Russell, ``Extended abstract: Learning search strategies.'' In Proceedings of the AAAI Spring Symposium on Search Techniques for Problem Solving under Uncertainty and Incomplete Information, Stanford, CA, 1999.
  20. Michael Shilman, Hanna Pasula, Stuart Russell, and Richard Newton, ``Statistical Visual Language Models for Ink Parsing.'' In Proc. AAAI Spring Symposium on Sketch Understanding, Stanford, March 2002.
  21. Bhaskara Marthi, Brian Milch, and Stuart Russell, ``First-Order Probabilistic Models for Information Extraction.'' In Proc. IJCAI-03 Workshop on Learning Statistical Models from Relational Data, Acapulco, Mexico, 2003.
  22. Brian Milch, Bhaskara Marthi, and Stuart Russell, ``BLOG: Relational Modeling with Unknown Objects.'' In Proc. ICML-04 Workshop on Statistical Relational Learning, Banff, Canada, 2004.
  23. Bhaskara Marthi, David Latham, Carlos Guestrin, Stuart Russell, ``Concurrent Hierarchical Reinforcement Learning.'' In Proc. AAAI-04 Workshop on Learning and Planning in Markov Processes, San Jose, 2004.
  24. Bhaskara Marthi, Stuart Russell, and David Latham, ``Writing Stratagus-Playing Agents in Concurrent ALisp.'' In Proc. IJCAI-05 Workshop on Reasoning, Representation, and Learning in Computer Games, Edinburgh, Scotland, 2005.
  25. Jason Wolfe and Stuart Russell, ``Exploiting Belief State Structure in Graph Search.'' In Proceedings of the ICAPS 2007 Workshop on Planning in Games, Providence, Rhode Island, 2007.
  26. Norm Aleks, Stuart Russell, Michael G. Madden, Diane Morabito, Geoffrey Manley, Kristan Staudenmayer, and Mitchell Cohen, ``Probabilistic modeling of sensor artifacts in critical care,'' In Proc. ICML-08 Workshop on Machine Learning in Health Care Applications, Helsinki, 2008.
  27. Rodrigo de Salvo Braz, Sriram Natarajan, Hung Bui, Jude Shavlik, and Stuart Russell, ``Anytime Lifted Belief Propagation,'' In Proc. SRL-2009, the International Workshop on Statistical Relational Learning, Leuven, Belgium, 2009.
  28. Siddharth Srivastava and Stuart Russell, ``First-Order Models for POMDPs.'' In Proc. 2nd International Workshop on Statistical Relational AI (StarAI-12), Catalina Island, 2012.
  29. Siddharth Srivastava, Lorenzo Riano, Stuart Russell, and Pieter Abbeel, ``Using Classical Planners for Tasks with Continuous Operators in Robotics.'' In ICAPS-13 Workshop on Planning and Robotics, Rome, 2013.
  30. Yusuf B. Erol, Stuart J. Russell, Ahilan Sivaganesan, and Geoffrey T. Manley, ``Combined State and Parameter Estimation of Human Intracranial Hemodynamics.'' In Proc. NIPS-13 Workshop on Machine Learning for Clinical Data Analysis and Healthcare, Lake Tahoe, California, 2013.
  31. David A. Moore, Kevin Mayeda, Stephen C. Myers, Stuart J. Russell, Bayesian Inference for Signal-Based Seismic Monitoring (poster), AGU Fall Meeting, San Francisco, 2015.
  32. Stuart Russell, Nimar S. Arora, and David Moore, ``Bayesian Monitoring Systems for the CTBT: Historical Development and New Results.'' Eos Transactions of the American Geophysical Union, Fall Meeting Supplement, Abstract S34A-07, 2016.
  33. David Moore and Stuart Russell, ``Initial Evaluation of Signal-Based Bayesian Monitoring.'' Eos Transactions of the American Geophysical Union, Fall Meeting Supplement, Abstract S31A-2707, 2016.
  34. Nimar S. Arora and Stuart Russell, ``Fine-Scale Event Location and Error Analysis in NET-VISA.'' Eos Transactions of the American Geophysical Union, Fall Meeting Supplement, Abstract S31A-2710, 2016.
  35. Malayandi Palaniappan, Dhruv Malik, Dylan Hadfield-Menell, Anca Dragan, Stuart Russell, ``Efficient Cooperative Inverse Reinforcement Learning.'' In Proc. ICML Workshop on Reliable Machine Learning in the Wild, 2017.
  36. Thanard Kurutach, Aviv Tamar, Ge Yang, Stuart Russell and Pieter Abbeel, ``Learning Plannable Representations with Causal InfoGAN.'' In Proc. ICML / IJCAI / AAMAS 2018 Workshop on Planning and Learning (PAL-18), Stockholm, 2018. Revised version on arXiv:1807.09341.
  37. Aaron Tucker, Adam Gleave, and Stuart Russell, ``Inverse Reinforcement Learning for Video Games.'' In Proc. NeurIPS-18 Workshop on Deep RL, 2018.
  38. Prasad Tadepalli, Cameron Barrie, and Stuart J. Russell, ``Learning Causal Trees with Latent Variables via Controlled Experimentation.'' In Proc. AAAI Spring Symposium on Beyond Curve Fitting: Causation, Counterfactuals, and Imagination-Based AI, Stanford, 2019.
  39. Adam Gleave, Michael Dennis, Neel Kant, Cody Wild, Sergey Levine and Stuart Russell, ``Adversarial Policies: Attacking Deep Reinforcement Learning.'' In Proc. ICML-19 Workshop on Security and Privacy in Machine Learning, Long Beach, California, 2019.
  40. Rohin Shah, Pedro Freire, Neel Alex, Rachel Freedman, Dmitrii Krasheninnikov, Lawrence Chan, Michael Dennis, Pieter Abbeel, Anca Dragan and Stuart Russell, ``Benefits of Assistance over Reward Learning. In Proc. NeurIPS-20 Workshop on Cooperative AI, 2020. (Best Paper Prize)
  41. Arnaud Fickinger, Simon Zhuang, Andrew Critch, Dylan Hadfield-Menell and Stuart Russell, ``Multi-Principal Assistance Games: Definition and Collegial Mechanisms. In Proc. NeurIPS-20 Workshop on Cooperative AI, 2020.
  42. Eric Michaud, Adam Gleave, and Stuart Russell,, ``Understanding learned reward functions. In Proc. NeurIPS-20 Workshop on Deep Reinforcement Learning, 2020.
  43. Pedro Freire, Adam Gleave, Sam Toyer and Stuart Russell, ``DERAIL: Diagnostic Environments for Reward And Imitation Learning. In Proc. NeurIPS-20 Workshop on Deep Reinforcement Learning, 2020.
  44. Adam Gleave, Michael Dennis, Shane Legg, Stuart Russell and Jan Leike, ``Quantifying Differences in Reward Functions. In Proc. NeurIPS-20 Workshop on Deep Reinforcement Learning, 2020.
  45. Thanard Kurutach, Julia Peng, Yang Gao, Stuart Russell, and Pieter Abbeel, Discrete Predictive Representation for Long-Horizon Planning. In Proc. NeurIPS-20 Workshop on Object Representations for Learning and Reasoning, 2020.
  46. Scott Emmons, Caspar Oesterheld, Andrew Critch, Vince Conitzer, and Stuart Russell, Symmetry, equilibria, and robustness in common-payoff games. In Proc. AAMAS-21 Workshop on Games, Agents, and Incentives, 2021.
  47. Arnaud Fickinger, Natasha Jaques, Samyak Parajuli, Michael Chang, Nicholas Rhinehart, Glen Berseth, Stuart Russell, and Sergey Levine, Explore and control with adversarial surprise. In Proc. ICML-21 Workshop on Unsupervised Reinforcement Learning, 2021.
  48. Stephen Casper, Shlomi Hod, Daniel Filan, Cody Wild, Andrew Critch, and Stuart Russell, Graphical clusterability and local specialization in deep neural networks. In Proc. ICLR-22 Workshop on Privacy, Accountability, Interpretability, Robustness, Reasoning on Structured Data, 2022.
  49. Tony Tong Wang, Adam Gleave, Nora Belrose, Tom Tseng, Michael D Dennis, Yawen Duan, Viktor Pogrebniak, Joseph Miller, Sergey Levine, and Stuart Russell, Adversarial policies beat superhuman Go AIs. In Proc. NeurIPS-22 Workshop on Deep Reinforcement Learning, 2022.
  50. Cassidy Laidlaw, Stuart Russell, and Anca Dragan, Bridging RL Theory and Practice with the Effective Horizon, ICML 2023 Workshop on New Frontiers in Learning, Control, and Dynamical Systems, 2023. (Best Paper Award)
  51. Dylan Cope, Justin Svegliato, and Stuart Russell, Learning to plan with tree search via deep RL. In Proc. IJCAI-23 Workshop on Bridging the Gap Between AI Planning and Reinforcement Learning, 2023.
  52. Sam Toyer, Olivia Watkins, Ethan Adrian Mendes, Justin Svegliato, Luke Bailey, Tiffany Wang, Isaac Ong, Karim Elmaaroufi, Pieter Abbeel, Trevor Darrell, Alan Ritter, and Stuart Russell, Tensor Trust: Interpretable Prompt Injection Attacks from an Online Game. In Proc. NeurIPS-23 Workshop on Robustness of Few-shot and Zero-shot Learning in Large Foundation Models, 2023.
  53. Julian Yocum, Phillip Christoffersen, Mehul Damani, Justin Svegliato, Dylan Hadfield-Menell, and Stuart Russell, Mitigating Generative Agent Social Dilemmas. In Proc. NeurIPS-23 Workshop on Foundation Models for Decision Making, 2023.
  54. Jeremy Tien, Zhaojing Yang, Miru Jun, Stuart J. Russell, Anca Dragan, and Erdem Biyik, Optimizing Robot Behavior via Comparative Language Feedback. In Proc. 3rd Workshop on Human-Interactive Robot Learning (HIRL), HRI-24, Boulder, Colorado, 2024.

Book chapters

  1. Stuart Russell ``Analogy by Similarity.'' In David Helman (Ed.), Analogical Reasoning, Boston, MA: D. Reidel, 1988.
  2. Stuart Russell and Benjamin Grosof ``Declarative Bias: An Overview.'' In Benjamin, P. (Ed.) Change of Representation and Inductive Bias, Dordrecht: Kluwer Academic Publishers, 1989.
  3. Stuart Russell and Devika Subramanian ``Mutual Constraints on Representation and Inference.'' In Brazdil, P., and Konolige, K. (Eds.) Machine Learning, Meta-Reasoning and Logics. Dordrecht: Kluwer Academic Publishers, 1990.
  4. Stuart Russell and Benjamin Grosof ``A Sketch of Autonomous Learning using Declarative Bias.'' In Brazdil, P., and Konolige, K. (Eds.) Machine Learning, Meta-Reasoning and Logics. Dordrecht: Kluwer Academic Publishers, 1990.
  5. Benjamin Grosof and Stuart Russell ``Shift of Bias as Nonmonotonic Reasoning.'' In Brazdil, P., and Konolige, K. (Eds.) Machine Learning, Meta-Reasoning and Logics. Dordrecht: Kluwer Academic Publishers, 1990.
  6. Stuart Russell ``Prior Knowledge and Autonomous Learning.'' In Maes, P. and van der Velde, W. (Eds.) Representation and Learning in an Autonomous Agent. Cambridge, MA: MIT Press, 1990.
  7. Sampath Srinivas, Stuart Russell, and Alice Agogino, ``Automated construction of sparse Bayesian networks from unstructured probabilistic models and domain information.'' In M. Henrion, R. D. Shachter, L. N. Kanal, and J. F. Lemmer (Eds.) Uncertainty in Artificial Intelligence 5. Amsterdam: North Holland, 1990.
  8. Todd R. Davies and Stuart Russell ``A Logical Approach to Reasoning by Analogy.'' In T. Dietterich (Ed.) Readings in Machine Learning. San Mateo, CA: Morgan Kaufmann, 1990.
  9. Stuart Russell and Devika Subramanian ``On Provably RALPHs.'' In E. Baum (Ed.) Computational Learning and Cognition: Proceedings of the Third NEC Research Symposium. SIAM Press, 1993.
  10. Saso Dzeroski, Stephen Muggleton and Stuart Russell ``PAC-Learnability of Constrained, Nonrecursive Logic Programs.'' In T. Petsche, S. Hanson, and J. Shavlik (Eds.), Computational Learning Theory and Natural Learning Systems, Volume III: Selecting Good Models, MIT Press, 1995.
  11. Shlomo Zilberstein and Stuart Russell, ``Approximate reasoning using anytime algorithms.'' In S. Natarajan (Ed.) Imprecise and Approximate Computation, Kluwer Academic Publishers, Dordrecht, 1995.
  12. Stuart Russell, ``Machine Learning.'' Chapter 4 of M. A. Boden (Ed.), Artificial Intelligence, Academic Press, 1996. Part of the Handbook of Perception and Cognition.
  13. Michael Jordan and Stuart Russell, ``Computational Intelligence.'' In The MIT Encyclopedia of the Cognitive Sciences, MIT Press, 1999.
  14. Stuart Russell, ``Metareasoning.'' In The MIT Encyclopedia of the Cognitive Sciences, MIT Press, 1999.
  15. Kevin Murphy and Stuart Russell, ``Rao-Blackwellised Particle Filtering for Dynamic Bayesian Networks.'' In Sequential Monte Carlo Methods in Practice, A. Doucet, N. de Freitas and N.J. Gordon (eds), Springer-Verlag, 2001.
  16. Stuart Russell, ``Rationality and Intelligence.'' In Renee Elio (Ed.), Common sense, reasoning, and rationality, Oxford University Press, 2002.
  17. Judea Pearl and Stuart Russell, ``Bayesian Networks.'' In Michael A. Arbib, Ed., The Handbook of Brain Theory and Neural Networks, 2nd edition, MIT Press, 2003.
  18. Brian Milch, Bhaskara Marthi, Stuart Russell, David Sontag, Daniel L. Ong and Andrey Kolobov, ``BLOG: Probabilistic Models with Unknown Objects.'' In L. Getoor and B. Taskar, Eds., Introduction to Statistical Relational Learning. Cambridge, MA: MIT Press, 2007.
  19. Brian Milch and Stuart Russell, ``Extending Bayesian Networks to the Open-Universe Case.'' In Rina Dechter, Hector Geffner, and Joseph Y Halpern, Eds., Heuristics, Probability and Causality. A Tribute to Judea Pearl. College Publications, 2010.
  20. J. Claude Hemphill III, Marco D. Sorani, Stuart Russell, and Geoffrey T. Manley, ``Medical informatics.'' In P. D. Le Roux, J. M. Levine, and W. A. Kofke (Eds.), Monitoring in Neurocritical Care. Philadelphia: Elsevier, 2010.
  21. Stuart Russell, Will they make us better people?, in John Brockman, Ed., What to Think About Machines That Think, Harper Collins, 2015.
  22. Stuart Russell, ``Rationality and Intelligence: A Brief Update.'' In Vincent C. Müller (ed.), Fundamental Issues of Artificial Intelligence (Synthese Library). Berlin: Springer, 2016.
  23. Stuart Russell, Provably beneficial artificial intelligence. In The Next Step: Exponential Life, BBVA OpenMind, 2017.
  24. Stuart Russell, ``The Purpose Put Into the Machine.'' In John Brockman, Ed., Possible Minds: 25 Ways of Looking at AI, Penguin Press, 2019.
  25. Stuart Russell, ``Artificial intelligence: A binary approach.'' In S. Matthew Liao (Ed.), Ethics of Artificial Intelligence. Oxford: Oxford University Press, 2020.
  26. Stuart Russell, ``Human-Compatible Artificial Intelligence.'' In Stephen Muggleton and Nick Chater (eds.), Human-Like Machine Intelligence, Oxford University Press, 2021.
  27. Raja Chatila, Virginia Dignum, Michael Fisher, Fosca Gianotti, Katharina Morik, Stuart Russell, David Sadek, and Karen Yeung, ``Trustworthy AI.'' In Bertrand Braunschweig and Malik Ghallab (eds.), Reflections on Artificial Intelligence for Humanity, Springer, 2021.
  28. Jocelyn Maclure and Stuart Russell, ``AI for Humanity: The Global Challenges.'' In Bertrand Braunschweig and Malik Ghallab (eds.), Reflections on Artificial Intelligence for Humanity, Springer, 2021.
  29. Stuart Russell, Artificial Intelligence and the Problem of Control. In H. Werthner, E. Prem, E. A. Lee, and C. Ghezzi (eds), Perspectives on Digital Humanism, Springer, 2021.
  30. Stuart Russell, Biography of Judea Pearl. In Hector Geffner, Rina Dechter, Joseph Y. Halpern (eds.), Probabilistic and Causal Inference: The Works of Judea Pearl, ACM Press, 2022.

Technical reports, non-refereed conference papers, preprints

  1. Stuart Russell The Compleat Guide to MRS. Stanford University Computer Science Department Report No. STAN-CS-85-1080; June 1985 126pp. Also published as Stanford Knowledge Systems Laboratory Report No. KSL-85-12.
  2. Todd R. Davies and Stuart Russell A Logical Approach to Reasoning by Analogy. SRI AI Center Technical Note 385; 1986.
  3. Stuart Russell Analogical and Inductive Reasoning. Ph. D. Thesis, Stanford University Department of Computer Science, December 1986. Also appeared as Stanford University Computer Science Department Technical Report STAN-CS-87-1150.
  4. Stuart Russell and Eric Wefald, Decision-Theoretic Search Control: General Theory and an Application to Game-Playing, Computer Science Division Technical Report 88/435, University of California, Berkeley, CA, 1988.
  5. Alice Agogino, Ramanathan Guha and Stuart Russell ``Sensor Fusion using Influence Diagrams and Reasoning by Analogy: Application to Milling Machine Monitoring and Control.'' Working paper 88-0304-P, Department of Mechanical Engineering, University of California, Berkeley, CA, 1988.
  6. Stuart Russell and Benjamin Grosof ``A Sketch of Autonomous Learning using Declarative Bias.'' Research report no. RC 14613 (#64812), IBM Research Division, 1989.
  7. Benjamin Grosof and Stuart Russell ``Shift of Bias as Nonmonotonic Reasoning.'' Research report no. RC 14614 (#65293), IBM Research Division, 1989.
  8. Benjamin Grosof and Stuart Russell ``Declarative Bias for Structural Domains.'' Research report no. RC 14620 (#64608), IBM Research Division, 1989.
  9. Ann Nicholson and Stuart Russell, ``Techniques for Handling Inference Complexity in Dynamic Belief Networks.'' Technical report no. CS-93-31, Computer Science Department, Brown University, 1993.
  10. Stuart Russell, John Binder, and Daphne Koller, ``Adaptive probabilistic networks.'' Technical report UCB//CSD-94-824, July 24, 1994.
  11. Jeff Forbes, Tim Huang, Keiji Kanazawa, and Stuart Russell, ``The BATmobile: Towards a Bayesian Automated Taxi.'' In SAE Future Transportation Technology Conference, Costa Mesa, CA, August, 1995.
  12. Jitendra Malik, Stuart Russell. ``Traffic Surveillance and Detection Technology Development: New Traffic Sensor Technology Final Report.'' California PATH Research Report UCB-ITS-PRR-97-6, Institute of Transportation Studies, University of California, Berkeley. January 1997.
  13. Simon Kasif and Stuart Russell (Eds.), Proceedings of the AAAI Fall Symposium on Learning Complex Behaviours, Cambridge, Massachusetts: AAAI Press.
  14. Jeffrey Forbes, Nikunj Oza, Ronald Parr, and Stuart Russell. ``Feasibility Study of Fully Automated Traffic Using Decision-Theoretic Control.'' California PATH Research Report UCB-ITS-PRR-97-18, Institute of Transportation Studies, University of California, Berkeley. April 1997.
  15. Geoffrey Zweig and Stuart Russell. ``Compositional Modeling with DPNs.'' Technical Report No. UCB-CSD-97-970, Computer Science Division, University of California, Berkeley. December 1997.
  16. Vassilis Papavassiliou and Stuart Russell, ``Value Determination with General Function Approximators.'' Technical Report CSD-98-1005, Computer Science Division, UC Berkeley, 1998.
  17. David Andre and Stuart Russell, ``State Abstraction for Programmable Reinforcement Learning Agents.'' Technical Report CSD-01-1156, Computer Science Division, UC Berkeley, 2001.
  18. Songhwai Oh, Stuart Russell, and Shankar Sastry, ``Markov Chain Monte Carlo Data Association for Multiple-Target Tracking,'' University of California, Berkeley, Technical Report UCB//ERL M05/19, June 2005.
  19. B. Marthi, S. J. Russell, and J. Wolfe, ``Angelic Semantics for High-Level Actions,'' Tech. Rep. UCB/EECS-2007-89, EECS Department, University of California, Berkeley, July 2007.
  20. Bhaskara Marthi, Stuart Russell, and Jason Wolfe, ``Angelic Hierarchical Planning: Optimal and Online Algorithms,'' Tech. Rep. UCB/EECS-2008-150, EECS Department, University of California, Berkeley, Dec 2008.
  21. Stuart Russell, Sheila Vaidya, ``Machine Learning and Data Mining for Comprehensive Test Ban Treaty Monitoring.'' Technical Report LLNL-TR-416780, Lawrence Livermore National Laboratory, 2009.
  22. Stuart Russell, Nimar Arora, Michael Jordan, and Erik Sudderth, "Vertically Integrated Seismological Analysis I: Modeling." Eos Transactions of the American Geophysical Union, 90(52), Fall Meeting Supplement, Abstract S33D-08, 2009.
  23. Nimar Arora, Stuart Russell, and Erik Sudderth, "Vertically Integrated Seismological Analysis II: Inference." Eos Transactions of the American Geophysical Union, 90(52), Fall Meeting Supplement, Abstract S31B-1713, 2009.
  24. Nimar S. Arora, Stuart J. Russell, Paul Kidwell, and Erik Sudderth, ``Global seismic monitoring as probabilistic inference.'' Technical Report No. UCB/EECS-2010-108, EECS Department, University of California, Berkeley, 2010.
  25. Stuart Russell, Sheila Vaidya, and Ronan Le Bras, ``Machine Learning for Comprehensive Nuclear-Test-Ban Treaty Monitoring.'' CTBTO Spectrum, 14, 32-35, 2010.
  26. Nicholas J. Hay and Stuart Russell, ``Metareasoning for Monte Carlo Tree Search.'' Technical Report No. UCB/EECS-2011-119, EECS Department, University of California, Berkeley, 2010.
  27. Nimar Arora, Tony Dear, and Stuart Russell, ``Scalable Probabilistic Inference for Global Seismic Monitoring.'' Eos Transactions of the American Geophysical Union, 92(53), Fall Meeting Supplement, Abstract S43B-2238, 2011.
  28. Nimar Arora and Stuart Russell, ``A model of seismic coda arrivals to suppress spurious events (abstract).'' In Proc. European Geophysical Union General Assembly, Vienna, 2012.
  29. Ahilan Sivaganesan, Yusuf Erol, Geoffrey Manley, and Stuart Russell, ``Modeling and Machine Learning of Cerebrovascular Dynamics: A Framework for Monitoring Unmeasurable Patient Variables (abstract).'' Congress of Neurological Surgeons Annual Meeting, Chicago, 2012.
  30. Nimar Arora and Stuart Russell, ``A model of seismic coda arrivals to suppress spurious events (abstract).'' In Proc. European Geophysical Union General Assembly, Vienna, 2012.
  31. Siddharth Srivastava, Xiang Cheng, Stuart J. Russell and Avi Pfeffer, ``First-Order Open-Universe POMDPs: Formulation and Algorithms.'' Technical Report No. UCB/2013-243, EECS Department, University of California, Berkeley, 2013.
  32. Lei Li, Yi Wu and Stuart J. Russell, SWIFT: Compiled Inference for Probabilistic Programs. Technical Report EECS-2015-12, UC Berkeley, 2015.
  33. Hugh Chen, Yusuf Erol, Eric Shen, Stuart Russell, Probabilistic Model-Based Approach for Heart Beat Detection. arXiv:1512.07931, December 2015.
  34. Dylan Hadfield-Menell, Anca Dragan, Pieter Abbeel, and Stuart Russell, Cooperative Inverse Reinforcement Learning, arXiv:1606.03137, June 2016.
  35. Dylan Hadfield-Menell, Anca Dragan, Pieter Abbeel, and Stuart Russell, The Off-Switch Game, arXiv:1611.08219, November 2016.
  36. Tongzhou Wang, Yi Wu, David A. Moore, Stuart J. Russell, ``Neural Block Sampling,'' arXiv:1708.06040v1, August 2017.
  37. Andrew Critch and Stuart Russell, ``Servant of Many Masters: Shifting priorities in Pareto-optimal sequential decision-making,'' arXiv:1711.00363, October 2017.
  38. R. Le Bras, N. Arora, N. Kushida, P. Mialle, I. Bondar, S. Laban, M. Villarroel, B. Vera, A. Sudakov, S. Nippress, D. Bowers, S. Russell, and T. Taylor, ``The Machine-Learning Tool NET-VISA from Cradle to Adulthood - The Next Generation System of the IDC and the SnT Process.'' In CTBT: Science and Technology Conference, Vienna, 2019.
  39. N. Arora, S. Russell, P. Mialle, R. Le Bras, and P. Nielsen, ``Recent Advances and Status of Generative Modeling for Network Processing at the CTBTO.'' In CTBT: Science and Technology Conference, Vienna, 2019.
  40. Daniel Filan, Shlomi Hod, Cody Wild, Andrew Critch, and Stuart Russell, ``Pruned Neural Networks are Surprisingly Modular,'' arXiv:2003.04881, March 2020.
  41. Adam Gleave, Michael Dennis, Shane Legg, Stuart Russell, and Jan Leike, ``Quantifying Differences in Reward Functions. arXiv:2006.13900, June 2020.
  42. Eric J Michaud, Adam Gleave, and Stuart Russell, Understanding learned reward functions. arXiv:2012.05862, December 2020.
  43. Daniel Filan, Stephen Casper, Shlomi Hod, Cody Wild, Andrew Critch, and Stuart Russell, Clusterability in neural networks. arXiv:, March 2021.
  44. Cassidy Laidlaw and Stuart Russell, Learning the preferences of uncertain humans with inverse decision theory. arXiv:2106.10394, June 2021.
  45. Rohin Shah, Cody Wild, Steven H. Wang, Neel Alex, Brandon Houghton, William Guss, Sharada Mohanty, Anssi Kanervisto, Stephanie Milani, Nicholay Topin, Pieter Abbeel, Stuart Russell, and Anca Dragan, ``The MineRL BASALT Competition on Learning from Human Feedback. arxiv.org/abs/2107.01969, July 2021.
  46. Arnaud Fickinger, Natasha Jaques, Samyak Parajuli, Michael Chang, Nicholas Rhinehart, Glen Berseth, Stuart Russell, and Sergey Levine, Explore and control with adversarial surprise. arXiv:2107.07394, July 2021.
  47. Alexander Bustamante, Brandie M. Nonnecke, and Stuart Russell (Eds.), Responsible Artificial Intelligence: Recommendations to Guide the University of California's Artificial Intelligence Strategy. Final report of the University of California Presidential Working Group on AI. October 2021.
  48. Shlomi Hod, Daniel Filan, Stephen Casper, Andrew Critch, and Stuart Russell, Quantifying local specialization in deep neural networks. arXiv:2110.08058, October 2021.
  49. Arnaud Fickinger, Samuel Cohen, Stuart Russell, and Brandon Amos,, Cross-Domain Imitation Learning via Optimal Transport. arXiv:2110.03684, October 2021.
  50. Stuart Russell and Daniel Susskind (Eds.), Positive AI Economic Futures, Insight Report, World Economic Forum, November 22, 2021.
  51. Stuart Russell, Provably beneficial artificial intelligence (abstract). In Proc. IUI-22, 2022.
  52. Xin Chen, Sam Toyer, Cody Wild, Scott Emmons, Ian Fischer, Kuang-Huei Lee, Neel Alex, Steven H Wang, Ping Luo, Stuart Russell, Pieter Abbeel, and Rohin Shah, An empirical investigation of representation learning for imitation. arXiv:2205.07886, May 2022.
  53. Andrew Critch, Michael Dennis, and Stuart Russell, Cooperative and uncooperative institution designs: Surprises and problems in open-source game theory. arXiv:2208.07006, August 2022.
  54. Adam Gleave, Mohammad Taufeeque, Juan Rocamonde, Erik Jenner, Steven H. Wang, Sam Toyer, Maximilian Ernestus, Nora Belrose, Scott Emmons, and Stuart Russell, imitation: Clean Imitation Learning Implementations. arxiv.org:2211.11972, November 2022.
  55. Paria Rashidinejad, Hanlin Zhu, Kunhe Yang, Stuart Russell, and Jiantao Jiao, Optimal conservative offline RL with general function approximation via augmented Lagrangian. arXiv:2211.00716, November 2022.
  56. Tony T. Wang, Adam Gleave, Tom Tseng, Nora Belrose, Kellin Pelrine, Joseph Miller, Michael D Dennis, Yawen Duan, Viktor Pogrebniak, Sergey Levine, Stuart Russell, Adversarial policies beat superhuman Go AIs. arXiv:2211.00241, February 2023.
  57. Andrew Critch and Stuart Russell, TASRA: A Taxonomy and Analysis of Societal-Scale Risks from AI, arXiv:2306.06924, June 2023
  58. Peter Barnett, Rachel Freedman, Justin Svegliato, and Stuart Russell, Active Reward Learning from Multiple Teachers. arXiv:2303.00894, March 2023.
  59. Alistair Knott, Dino Pedreschi, Raja Chatila, Susan Leavy, Ricardo Baeza-Yates, Tapabrata Chakraborti, David Eyers, Andrew Trotman, Lama Saouma, Virginia Morini, Valentina Pansanella, Paul D. Teal, Przemyslaw Biecek, Ivan Bratko, Stuart Russell, and Yoshua Bengio, State-of-the-art Foundation AI Models Should be Accompanied by Detection Mechanisms as a Condition of Public Release, Report, Global Partnership on Artificial Intelligence, 2023.
  60. Luke Bailey, Euan Ong, Stuart Russell, and Scott Emmons, Image Hijacks: Adversarial Images can Control Generative Models at Runtime, arXiv:2309.00236, September 2023.
  61. Rachel Freedman, Justin Svegliato, Kyle Wray, and Stuart Russell, Active teacher selection for reinforcement learning from human feedback. arXiv:2310.15288, October 2023.
  62. Hanlin Zhu, Baihe Huang, and Stuart Russell, On Representation Complexity of Model-based and Model-free Reinforcement Learning. arXiv:2310.01706, October 2023.
  63. Andrew Yao, Yoshua Bengio, Stuart Russell, Ya-Qin Zhang, Ed Felten, Roger Grosse, Gillian Hadfield, Sana Khareghani, Dylan Hadfield-Menell, Karine Perset, Dawn Song, Xin Chen, Max Tegmark, Elizabeth Seger, Yi Zeng, HongJiang Zhang, Yang-Hui He, Adam Gleave, and Fynn Heide, Statement. International Dialogue on AI Safety, Ditchley Park, UK, October, 2023.
  64. Yoshua Bengio, Geoffrey Hinton, Andrew Yao, Dawn Song, Pieter Abbeel, Yuval Noah Harari, Ya-Qin Zhang, Lan Xue, Shai Shalev-Shwartz, Gillian Hadfield, Jeff Clune, Tegan Maharaj, Frank Hutter, Atilim Gunes Baydin, Sheila McIlraith, Qiqi Gao, Ashwin Acharya, David Krueger, Anca Dragan, Philip Torr, Stuart Russell, Daniel Kahnemann, Jan Brauner, and Soren Mindermann, Managing AI Risks in an Era of Rapid Progress, October 24, 2023.
  65. Sam Toyer, Olivia Watkins, Ethan Adrian Mendes, Justin Svegliato, Luke Bailey, Tiffany Wang, Isaac Ong, Karim Elmaaroufi, Pieter Abbeel, Trevor Darrell, Alan Ritter, and Stuart Russell, Tensor trust: Interpretable prompt injection attacks from an online game. arXiv:2311.01011, November 2023.
  66. Edmund Mills, Shiye Su, Stuart Russell, and Scott Emmons, ALMANACS: A Simulatability Benchmark for Language Model Explainability, arXiv:2312.12747, December 2023.
  67. Cassidy Laidlaw, Banghua Zhu, Stuart Russell, and Anca Dragan, The Effective Horizon Explains Deep RL Performance in Stochastic Environments. arXiv:2312.08369, December 2023.
  68. Leon Lang, Davis Foote, Stuart Russell, Anca Dragan, Erik Jenner, and Scott Emmons, When Your AIs Deceive You: Challenges with Partial Observability of Human Evaluators in Reward Learning, arXiv:2402.17747, February 2024.
  69. Stuart Russell, Make AI safe or make safe AI?, UNESCO Global AI Ethics and Governance Observatory, February 2024.
  70. Evan Ellis, Gaurav Ghosal, Stuart Russell, Anca Dragan, and Erdem Biyik, A Generalized Acquisition Function for Preference-based Reward Learning. arXiv:2403.06003, March 2024.
  71. Geoffrey Hinton, Andrew Yao, Yoshua Bengio, Ya-Qin Zhang, Fu Ying, Stuart Russell Professor of Electrical Engineering and Computer Sciences, Xue Lan, Gillian Hadfield, HongJiang Zhang, Tiejun Huang, Yi Zeng, Robert Trager, Kwok-Yan Lam, Dawn Song, Zhongyuan Wang, Dylan Hadfield-Menell, Yaodong Yang, Zhang Peng, Li Hang, Tian Tian, Edward Suning Tian, Toby Ord, Fynn Heide, and Adam Gleave, Consensus Statement on Red Lines in Artificial Intelligence. International Dialogue on AI Safety, Beijing, March, 2024.
  72. Vincent Conitzer, Rachel Freedman, Jobst Heitzig, Wesley H. Holliday, Bob M. Jacobs, Nathan Lambert, Milan Moss, Eric Pacuit, Stuart Russell, Hailey Schoelkopf, Emanuel Tewolde, and William S. Zwicker, Social Choice for AI Alignment: Dealing with Diverse Human Feedback, arXiv:2404.10271, April 2024.
  73. David Dalrymple, Joar Skalse, Yoshua Bengio, Stuart Russell, Max Tegmark, Sanjit Seshia, Steve Omohundro, Christian Szegedy, Ben Goldhaber, Nora Ammann, Alessandro Abate, Joe Halpern, Clark Barrett, Ding Zhao, Tan Zhi-Xuan, Jeannette Wing, and Joshua Tenenbaum, Towards Guaranteed Safe AI: A Framework for Ensuring Robust and Reliable AI Systems, arXiv:2405.06624, May 2024.
  74. Yoshua Bengio, Bronwyn Fox, (multiple authors), Stuart Russell, (multiple authors), International Scientific Report on the Safety of Advanced AI (Interim Report), Report No. DSIT 2024/009, UK Department for Science, Innovation and Technology, May 2024.
  75. Micah Carroll, Davis Foote, Anand Siththaranjan, Stuart Russell, and Anca Dragan, AI Alignment with Changing and Influenceable Reward Functions, arXiv:2405.17713, May 2024.
  76. Hanlin Zhu, Baihe Huang, Shaolun Zhang, Michael Jordan, Jiantao Jiao, Yuandong Tian, and Stuart Russell, Towards a Theoretical Understanding of the 'Reversal Curse' via Training Dynamics, arXiv:2405.04669, May 2024.
  77. Shreyas Kapur, Erik Jenner, and Stuart Russell, Diffusion On Syntax Trees For Program Synthesis, arXiv:2405.20519, May 2024.
  78. Jiahai Feng, Stuart Russell, and Jacob Steinhardt, Monitoring latent world states in language models with propositional probes, arXiv:2406.19501, June 2024.
  79. Erik Jenner, Shreyas Kapur, Vasil Georgiev, Cameron Allen, Scott Emmons, and Stuart Russell, Evidence of Learned Look-Ahead in a Chess-Playing Neural Network, arXiv:2406.00877, June 2024.

Articles in magazines, newspapers, blogs, etc.

  1. Stephen Hawking, Stuart Russell, Max Tegmark, and Frank Wilczek, ``Transcending Complacency on Superintelligent Machines.'' Huffington Post, April 19, 2014.
  2. Stuart Russell, ``Transcendence: An AI Researcher Enjoys Watching His Own Execution.'' Huffington Post, April 29, 2014.
  3. Stuart Russell, Of Myths and Moonshine, contribution to the conversation on The Myth of AI on edge.org.
  4. Stuart Russell, Take a stand on AI weapons. Nature, 521(7553), May 28, 2015.
  5. Stuart Russell and others, Autonomous Weapons: an Open Letter from AI & Robotics Researchers, July 28, 2015.
  6. Stuart Russell, Max Tegmark, and Toby Walsh, Why We Really Should Ban Autonomous Weapons: A Response [to Ackerman], IEEE Spectrum, August 3, 2015.
  7. Stuart Russell, Hiroshima et Nagasaki: Des leçons pour le présent et pour l'avenir, Le Monde, August 7, 2015.
  8. Stuart Russell, Max Tegmark, and Toby Walsh, Why we really should ban autonomous weapons: A response [to Wallace], Kurzweil AI Blog, August 10, 2015.
  9. Stuart Russell, Ban lethal autonomous weapons, Boston Globe, September 8, 2015.
  10. Stuart Russell, Moral Philosophy Will Become Part of the Tech Industry, Time, September 15, 2015.
  11. Stuart Russell, Tom Dietterich, Eric Horvitz, Bart Selman, Francesca Rossi, Demis Hassabis, Shane Legg, Mustafa Suleyman, Dileep George, and Scott Phoenix, Research Priorities for Robust and Beneficial Artificial Intelligence: An Open Letter, AI Magazine, Vol. 36, No. 4, 2015.
  12. Eric Eaton, Tom Dietterich, Maria Gini, Barbara J. Grosz, Charles L. Isbell, Subbarao Kambhampati, Michael Littman, Francesca Rossi, Stuart Russell, Peter Stone, Toby Walsh, and Michael Wooldridge, Who speaks for AI?, AI Matters, Volume 2 Issue 2, December 2015, Pages 4-14.
  13. Stuart Russell, Robots in war: the next weapons of mass destruction?, World Economic Forum, January 17, 2016.
  14. Stuart Russell, Should we fear supersmart robots?. In Scientific American, 314, 58-59, June 2016.
  15. Stuart Russell, Tiptoe through the nuclear minefield, in Nature, November 11, 2016.
  16. Allan Dafoe and Stuart Russell, Yes, We Are Worried About the Existential Risk of Artificial Intelligence. MIT Technology Review, Nov 2, 2016.
  17. Stuart Russell, ``Artificial intelligence: The future is superintelligent.'' (Review of Life 3.0 by Max Tegmark.) Nature, 548, 520-521, 2017. (31 August 2017)
  18. Slaughterbots, short film. Released Nov 13, 2017.
  19. Stuart Russell, ``The new weapons of mass destruction?,'' Security Times, February 2018, 40-41. (Special issue of The German Times for the 54th Munich Security Conference.)
  20. Stuart Russell, Anthony Aguirre, Ariel Conn, and Max Tegmark, ``Why You Should Fear 'Slaughterbots' - A Response [to Scharre].'' IEEE Spectrum, January 23, 2018.
  21. Stuart Russell, ``How to make AI that works, for us, BBC Science Focus, November 16, 2018.
  22. Olaf Groth, Mark Nitzberg, and Stuart Russell, AI algorithms need FDA-style drug trials, Wired, August 15, 2019.
  23. Stuart Russell, How to Stop Superhuman A.I. Before It Stops Us, New York Times, October 8, 2019.
  24. Stuart Russell, Many Experts Say We Shouldn't Worry About Superintelligent AI. They're Wrong, IEEE Spectrum, October 8, 2019.
  25. Ronald Arkin, Leslie Kaelbling, Stuart Russell, Dorsa Sadigh, Paul Scharre, Bart Selman, and Toby Walsh, A Path Towards Reasonable Autonomous Weapons Regulation, IEEE Spectrum, October 21, 2019.
  26. Stuart Russell, Die gar nicht mal so grosse KI-Debatte, Digitale Welt, September 4, 2020.
  27. Stuart Russell and Charles-Édouard Bouée, ``The secret to designing a positive future with AI? Imagination.'' World Economic Forum, October 30, 2020.
  28. Stuart Russell, Anthony Aguirre, Emilia Javorsky and Max Tegmark, Lethal Autonomous Weapons Exist; They Must Be Banned, IEEE Spectrum, June 16, 2021.
  29. Stuart Russell, It's time to ban autonomous killer robots before they become a threat, Financial Times, August 5, 2021.
  30. Stuart Russell, Why we need to regulate non-state use of arms. Global Agenda, World Economic Forum, 18 May 2022.
  31. Stuart Russell, Politicians must prepare for AI or face the consequences. The House (magazine of the UK Houses of Parliament), Oct 14, 2022.
  32. Stuart Russell, AI weapons: Russia's war in Ukraine shows why the world must enact a ban. Nature, 614, 620-623, 2023. (21 February, 2023)
  33. Yoshua Bengio, Stuart Russell, Elon Musk, Steve Wozniak, and Yuval Noah Harari, Pause giant AI experiments: An open letter. Future of Life Institute, March 2023.
  34. Stuart Russell, AI has much to offer humanity. It could also wreak terrible harm. It must be controlled.. The Guardian, April 2, 2023.
  35. Stuart Russell, How can humans maintain control over AI, forever?, Boston Globe, May 15, 2023.
  36. Stuart Russell, Corrected oral evidence: Artificial intelligence in weapons systems, Artificial Intelligence in Weapons Systems Committee, House of Lords, London, June 15, 2023.
  37. Stuart Russell, Opening statement for the hearing on Oversight of AI: Principles for Regulation, U.S. Senate Committee on the Judiciary, Subcommittee on Privacy, Technology, and the Law, Washington, DC, July 25, 2023.
  38. Stuart Russell, Written testimony for the hearing on Oversight of AI: Principles for Regulation, U.S. Senate Committee on the Judiciary, Subcommittee on Privacy, Technology, and the Law, Washington, DC, July 25, 2023.
  39. Stuart Russell, Karine Perset, and Marko Grobelnik, Updates to the OECD's definition of an AI system explained, OECD AI Policy Observatory, November 29, 2023.
  40. Stuart Russell, Written testimony for the United States Senate AI Forum on Risk, Alignment, & Guarding Against Doomsday Scenarios, Washington, DC, December 6, 2023.
  41. Stuart Russell, Jonathan Reckford, Amy Brachio, Atle Hoie, Jane Nelson, Peter Maurer, Badr Jafar, and Jack Hidary, It's not all doom and gloom: 8 experts on their reasons to be optimistic in 2024, Davos Agenda, World Economic Forum, January 12, 2024.
  42. Alistair Knott, Dino Pedreschi, Jonathan Stray, and Stuart Russell, The EU's Digital Services Act must provide researchers access to VLOPs' experimental protocols, Forum for Information and Democracy, June 2024.

Theses supervised

Ph.D. Theses
  1. desJardins, Marie PAGODA: A Model for Autonomous Learning in Probabilistic Domains. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1992.
  2. Zilberstein, Shlomo Operational Rationality Through Compilation of Anytime Algorithms. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1993.
  3. Ogasawara, Gary RALPH-MEA: A Real-Time, Decision-Theoretic Agent Architecture. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1994.
  4. Musick, Charles Ronald Belief network induction. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1994.
  5. Mayer, Andrew Rational Search. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1994.
  6. Tash, Jonathan Decision Theory Made Tractable: The Value of Deliberation, with Applications to Markov Decision Process Planning. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1996.
  7. Zweig, Geoff, Speech recognition using dynamic Bayesian networks. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1998.
  8. Parr, Ronald, Solution methods for large Markov decision processes. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1998.
  9. Hansson, Othar, Bayesian Problem-Solving Applied to Scheduling. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1998.
  10. Huang, Timothy, Probabilistic Methods for Intelligent Transportation Systems. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 1999.
  11. Oza, Nikunj, Online Ensemble Learning. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2001.
  12. Forbes, Jeffrey, Learning Optimal Control for Autonomous Vehicles. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2002.
  13. Murphy, Kevin, Dynamic Bayesian Networks: Representation, Inference, and Learning. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2002.
  14. Andre, David, State Abstraction for Programmable Reinforcement Learning Agents. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2003.
  15. Pasula, Hanna, Identity Uncertainty. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2003.
  16. Papavassiliou, Vassilis, Value Determination with Function Approximation. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2003.
  17. Paskin, Mark, Exploiting Locality in Probabilistic Inference. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2004.
  18. Xing, Eric, Probabilistic Graphical Models and Algorithms for Genomic Analysis. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2004.
  19. Milch, Brian, Probabilistic Models with Unknown Objects. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2006.
  20. Marthi, Bhaskara, Concurrent Hierarchical Reinforcement Learning. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2006.
  21. Lawrence, Gregory, Efficient Gradient Estimation for Reinforcement Learning Algorithms. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2009.
  22. Canini, Kevin, Nonparametric Bayesian Models of Categorization. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2011.
  23. Wolfe, Jason, Optimal Hierarchical Planning. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2011.
  24. Arora, Nimar, Model-based Bayesian Seismic Monitoring. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2012.
  25. Chatterjee, Shaunak, Efficient inference algorithms for near-deterministic systems. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2013.
  26. Hay, Nicholas, Principles of Metalevel Control. PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2016.
  27. Moore, David, Signal-Based Bayesian Seismic Monitoring, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2017.
  28. Wu, Yi, On Building Generalizable Learning Agents, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2019.
  29. Shah, Rohin, Extracting and Using Preference Information from the State of the World, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2020.
  30. Kurutach, Thanard, Learning, Planning, and Acting with Models, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2021.
  31. Hadfield-Menell, Dylan, The Principal-Agent Alignment Problem in Artificial Intelligence, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2021.
  32. Rashidinejad, Paria, Reliable Prediction and Decision-Making in Sequential Environments, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2022.
  33. Gleave, Adam, Towards Trustworthy Machine Learning, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2022.
  34. Dennis, Michael, On Problem Specification and Self-Referential Claims, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2022.
  35. Filan, Daniel, Structure and Representation in Neural Networks, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2024.
  36. Toyer, Sam, Robust Task Specification for Learning Systems, PhD thesis, Computer Science Division, University of California, Berkeley, CA, 2024.

MS Theses

  1. Dutta, Soumitra Inductive Learning of Rules of Determination. MS report, Computer Science Division, University of California, Berkeley, CA, 1987.
  2. Guha, Ramanathan Induction and Analogy in Engineering Expert Systems. MS report, Mechanical Engineering Department, University of California, Berkeley, CA, 1987.
  3. Barbour, Brenda Experiments on Indexing Schemes for Logic Programming. MS report, Computer Science Division, University of California, Berkeley, CA, 1987.
  4. Sampath Srinivas Creating Influence Diagrams from Examples. MS report, Mechanical Engineering Department, University of California, Berkeley, CA, 1988.
  5. Wefald, Eric The Expected Value of Search: A Decision-Theoretic Framework for Game-Playing Algorithms. MS report, Computer Science Division, University of California, Berkeley, CA, 1988.
  6. Malone, Christopher Planning, Execution and Knowledge Compilation in Real-Time Agents. MS report, Computer Science Division, University of California, Berkeley, CA, 1988.
  7. Getoor, Lise Learning efficiently using declarative bias. MS report, Computer Science Division, University of California, Berkeley, CA, 1989.
  8. Ogasawara, Gary A Distributed Decision-Theoretic Control System for a Mobile Robot. MS report, Computer Science Division, University of California, Berkeley, CA, 1989.
  9. Koenig, Sven Optimal Probabilistic and Decision-Theoretic Planning using Markovian Decision Theory. MS report, Computer Science Division, University of California, Berkeley, CA, 1991.
  10. Sarkar, Sudeshna Constructive Induction for Situated Agents. MS report, Computer Science Division, University of California, Berkeley, CA, 1991.
  11. Conroy, Jeffrey Decision-Theoretic Control of Search in Probabilistic Domains. MS report, Computer Science Division, University of California, Berkeley, CA, 1991.
  12. Marx, Sonia Using tree-structured bias in training neural networks. MS report, Computer Science Division, University of California, Berkeley, CA, 1991.
  13. Glesner, Sabine Constructing flexible dynamic belief networks from first-order probabilistic knowledge bases. MS thesis, Computer Science Division, University of California, Berkeley, CA, 1994.
  14. Zweig, Geoff, A comparison between dynamic belief networks and hidden Markov models. MS thesis, Computer Science Division, University of California, Berkeley, CA, 1996.
  15. Braverman, Michael, Caste; A Class System for Tcl. MS thesis, Computer Science Division, University of California, Berkeley, CA, 1997.
  16. Oza, Nikunj, Probabilistic Models of Driver Behavior. MS thesis, Computer Science Division, University of California, Berkeley, CA, 1998.
  17. Zimdars, Andrew, Additive Value Function Decomposition for Reinforcement Learning Agents. MS thesis, Computer Science Division, University of California, Berkeley, CA, 2004.
  18. Pearson, Mark, Utility-Directed Sampling in Influence Diagrams. MS thesis, Computer Science Division, University of California, Berkeley, CA, 2006.
  19. Canini, Kevin, Modeling Categorization as a Dirichlet Process Mixture, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2007.
  20. Duckworth, Daniel, Monte Carlo Methods for Multiple Target Tracking and Parameter Estimation, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2012.
  21. Berzan, Constantin, Monte Carlo Methods for SLAM with Data Association Uncertainty, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2015.
  22. Zhou, Xiaofei, Coarse-to-fine MCMC in a seismic monitoring system, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2015.
  23. Desai, Nishant, Uncertain Reward-Transition MDPs for Negotiable Reinforcement Learning, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2018.
  24. Rulison, Jared, Program Synthesis in BLOG, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2018.
  25. Kim, Kyungna, Arrhythmia Classification in Multi-Channel ECG Signals Using Deep Neural Networks, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2018.
  26. Kha, Benjamin, Policy Transfer Algorithms for Meta Inverse Reinforcement Learning, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2019.
  27. Tibbetts, Jake, Explainable Classification of Nuclear Facility Operational State Using Node and Region Importance for Sensor Networks, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2021.
  28. Trinh, Tu, Autonomous Assessment of Demonstration Sufficiency, MS thesis, Computer Science Division, University of California, Berkeley, CA, 2024.

Boards, Consulting

Advisory Board, Taiyo AI, 2024-present
Advisory Board, Saras AI, 2024-present
AI Advisory Board, Glow Financial, 2024-present
Non-Executive Director, Intact Financial, 2020-present
Technical Advisory Board, Faculty Science, Ltd., 2020-present
Technical Advisory Board, Planet, 2019-present
Technical Advisory Board, ReciTAL, SARL, 2018-present
Technical Advisory Board, Varo Inc., 2015-2023
Technical Advisory Board, Semiotic Labs, Inc., 2015-2021
Vice President, Bayesian Logic Inc., 2011-present
Technical Advisory Board, Kaplan Inc., 2009-2012
Consultant, UN Comprehensive Test Ban Treaty Organization, 2009-2011
Consultant, Ciphergen Inc., Bioinformatics, 2001-2005
Consultant, Ikuni Inc., AI for Computer Games, 2001-2011
Consultant, Chiron Corporation, Probabilistic inference in drug design, 1996
Principal, Consumer Financial Service Corporation, Advanced data analysis techniques, 1995-present
Consultant, AT&T Bell Laboratories, Relating complexity theory to artificial intelligence, 1993
Consultant, NEC, Search and game-playing algorithms, 1992
Consultant, Shell International Trading Company, AI techniques for global oil market modelling, 1992
Consultant, MCC, Austin, TX , Representation and inference in the Large Scale KB Project (CYC), 1986-89
Consultant, Reasoning Systems Inc., Palo Alto, VHLL compilers and program transformation methods, 1985