Belief revision generalized: A joint characterization of Bayess and Je¤reys rules
نویسندگان
چکیده
We present a general framework for representing belief-revision rules and use it to characterize Bayess rule as a classical example and Je¤reys rule as a non-classical one. In Je¤reys rule, the input to a belief revision is not simply the information that some event has occurred, as in Bayess rule, but a new assignment of probabilities to some events. Despite their di¤erences, Bayess and Je¤reys rules can be characterized in terms of the same axioms: responsiveness, which requires that revised beliefs incorporate what has been learnt, and conservativeness, which requires that beliefs on which the learnt input is silentdo not change. To illustrate the use of non-Bayesian belief revision in economic theory, we sketch a simple decision-theoretic application. Keywords: Belief revision, subjective probability, Bayess rule, Je¤reys rule, axiomatic foundations, ne-grained versus coarse-grained beliefs, unawareness
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Belief revision generalized: A joint characterization of Bayesís and Je§reyís rules
We present a general framework for representing belief-revision rules and use it to characterize Bayesís rule as a classical example and Je§reyís rule as a non-classical one. In Je§reyís rule, the input to a belief revision is not simply the information that some event has occurred, as in Bayesís rule, but a new assignment of probabilities to some events. Despite their di§erences, Bayesís and J...
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