• Sleeping Beauty Reconsidered: Conditioning and Reflection in Asynchronous Systems
    In Tamar Szabo Gendler & John Hawthorne (eds.), Oxford Studies in Epistemology: Volume 1, Oxford University Press Uk. 2005.
  • Sleeping Beauty Reconsidered: Conditioning and Reflection in Asynchronous Systems
    In Tamar Szabo Gendler & John Hawthorne (eds.), Oxford Studies in Epistemology: Volume 1, Oxford University Press Uk. 2005.
  • Knowledge and Common Knowledge in a Distributed Environment
    with Yoram Moses
    Journal of the Association for Computing Machinery 37 (3). 1990.
  •  6
    Probability and Conditionals (review)
    Philosophical Review 109 (2): 277-281. 2000.
  •  88
    Causal Models with Constraints
    Proceedings of the 2Nd Conference on Causal Learning and Reasoning. 2023.
    Causal models have proven extremely useful in offering formal representations of causal relationships between a set of variables. Yet in many situations, there are non-causal relationships among variables. For example, we may want variables LDL, HDL, and TOT that represent the level of low-density lipoprotein cholesterol, the level of lipoprotein high-density lipoprotein cholesterol, and total cholesterol level, with the relation LDL+HDL=TOT. This cannot be done in standard causal models, becaus…Read more
  •  40
    Abstracting Causal Models
    Proceedings of the 33Rd Aaai Conference on Artificial Intelligence. 2019.
    We consider a sequence of successively more restrictive definitions of abstraction for causal models, starting with a notion introduced by Rubenstein et al. (2017) called exact transformation that applies to probabilistic causal models, moving to a notion of uniform transformation that applies to deterministic causal models and does not allow differences to be hidden by the "right" choice of distribution, and then to abstraction, where the interventions of interest are determined by the map from…Read more
  •  44
    Approximate Causal Abstraction
    Proceedings of the 35Th Conference on Uncertainty in Artificial Intelligence. 2019.
    Scientific models describe natural phenomena at different levels of abstraction. Abstract descriptions can provide the basis for interventions on the system and explanation of observed phenomena at a level of granularity that is coarser than the most fundamental account of the system. Beckers and Halpern (2019), building on work of Rubenstein et al. (2017), developed an account of abstraction for causal models that is exact. Here we extend this account to the more realistic case where an abstrac…Read more
  •  728
    A Causal Analysis of Harm
    with Sander Beckers and Hana Chockler
    Minds and Machines 34 (3): 1-24. 2024.
    As autonomous systems rapidly become ubiquitous, there is a growing need for a legal and regulatory framework that addresses when and how such a system harms someone. There have been several attempts within the philosophy literature to define harm, but none of them has proven capable of dealing with the many examples that have been presented, leading some to suggest that the notion of harm should be abandoned and “replaced by more well-behaved notions”. As harm is generally something that is cau…Read more
  •  58
    Probabilistic and Causal Inference: the Works of Judea Pearl (edited book)
    with Hector Geffner and Rita Dechter
    ACM Books. 2022.
    Professor Judea Pearl won the 2011 Turing Award "for fundamental contributions to artificial intelligence through the development of a calculus for probabilistic and causal reasoning." This book contains the original articles that led to the award, as well as other seminal works, divided into four parts: heuristic search, probabilistic reasoning, causality, first period (1988-2001), and causality, recent period (2002-2020). Each of these parts starts with an introduction written by Judea Pearl. …Read more
  •  46
    A Causal Analysis of Harm
    with Sander Beckers and Hana Chockler
    Advances in Neural Information Processing Systems 35. 2022.
    As autonomous systems rapidly become ubiquitous, there is a growing need for a legal and regulatory framework to address when and how such a system harms someone. There have been several attempts within the philosophy literature to define harm, but none of them has proven capable of dealing with with the many examples that have been presented, leading some to suggest that the notion of harm should be abandoned and "replaced by more well-behaved notions". As harm is generally something that is ca…Read more
  •  75
    Zero-one laws for modal logic (vol 69, pg 157, 1994)
    with Bruce Kapron
    Annals of Pure and Applied Logic 69 (2-3): 281-283. 1994.
    We show that a 0–1 law holds for propositional modal logic, both for structure validity and frame validity. In the case of structure validity, the result follows easily from the well-known 0–1 law for first-order logic. However, our proof gives considerably more information. It leads to an elegant axiomatization for almost-sure structure validity and to sharper complexity bounds. Since frame validity can be reduced to a Π11 formula, the 0–1 law for frame validity helps delineate when 0–1 laws ex…Read more
  •  56
    Combining experts' causal judgments
    with Dalal Alrajeh and Hana Chockler
    Artificial Intelligence 288 (C): 103355. 2020.
  •  42
    A logic for reasoning about ambiguity
    with Willemien Kets
    Artificial Intelligence 209 (C): 1-10. 2014.
  •  62
    Dealing with logical omniscience: Expressiveness and pragmatics
    with Riccardo Pucella
    Artificial Intelligence 175 (1): 220-235. 2011.
  •  68
    An analysis of first-order logics of probability
    Artificial Intelligence 46 (3): 311-350. 1990.
  •  39
    From statistical knowledge bases to degrees of belief
    with Fahiem Bacchus, Adam J. Grove, and Daphne Koller
    Artificial Intelligence 87 (1-2): 75-143. 1996.
  •  46
    A nonstandard approach to the logical omniscience problem
    with Ronald Fagin and Moshe Y. Vardi
    Artificial Intelligence 79 (2): 203-240. 1995.
  •  28
    Levesque's axiomatization of only knowing is incomplete
    with Gerhard Lakemeyer
    Artificial Intelligence 74 (2): 381-387. 1995.
  •  17
    Book review (review)
    Artificial Intelligence 277 (C): 103175. 2019.
  •  58
  •  45
    A logic to reason about likelihood
    with Michael O. Rabin
    Artificial Intelligence 32 (3): 379-405. 1987.
  •  92
    Belief, awareness, and limited reasoning
    Artificial Intelligence 34 (1): 39-76. 1987.
  •  76
  •  48
    Reasoning about noisy sensors and effectors in the situation calculus
    with Fahiem Bacchus and Hector J. Levesque
    Artificial Intelligence 111 (1-2): 171-208. 1999.
  •  45
    On the knowledge requirements of tasks
    with Ronen I. Brafman and Yoav Shoham
    Artificial Intelligence 98 (1-2): 317-349. 1998.