Belief Revision from Probability

Jeremy Goodman
(University of Southern California)
Bernhard Salow
(University of Oxford)

In previous work ("Knowledge from Probability", TARK 2021) we develop a question-relative, probabilistic account of belief. On this account, what someone believes relative to a given question is (i) closed under entailment, (ii) sufficiently probable given their evidence, and (iii) sensitive to the relative probabilities of the answers to the question. Here we explore the implications of this account for the dynamics of belief. We show that the principles it validates are much weaker than those of orthodox theories of belief revision like AGM, but still stronger than those valid according to the popular Lockean theory of belief, which equates belief with high subjective probability. We then consider a restricted class of models, suitable for many but not all applications, and identify some further natural principles valid on this class. We conclude by arguing that the present framework compares favorably to the rival probabilistic accounts of belief developed by Leitgeb and by Lin and Kelly.

In Rineke Verbrugge: Proceedings Nineteenth conference on Theoretical Aspects of Rationality and Knowledge (TARK 2023), Oxford, United Kingdom, 28-30th June 2023, Electronic Proceedings in Theoretical Computer Science 379, pp. 308–317.
Published: 11th July 2023.

ArXived at: https://dx.doi.org/10.4204/EPTCS.379.25 bibtex PDF
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