We interpret the problem of updating beliefs as a choice problem (selecting a posterior from a set of admissible posteriors) with a reference point (prior). We use AGM belief revision to define the support of admissible posteriors after arrival of information, which applies also to zero probability events. We study two classes of updating rules for probabilities: 1) “lexicographic” updating rules where posteriors are given by a lexicographic probability system 2) “minimum distance” updating rules which select the posterior closest to the prior by some metric. We show that an updating rule is lexicographic if and only if it is Bayesian, AGM-consistent and satisfies a weak form of path independence. While not all lexicographic updating rules ...
This paper characterizes different belief revision rules in a unified framework: Bayesian revision u...
We present a general framework for representing belief-revision rules and use it to characterize Bay...
We present a general framework for representing belief-revision rules and use it to characterise Bay...
We provide an axiomatic characterization of Bayesian updating, viewed as a mapping from prior belief...
We provide an axiomatic characterization of Bayesian updating, viewed as a mapping from prior belief...
We provide an axiomatic characterization of Bayesian updating, viewed as a mapping from prior belief...
International audienceWe present and axiomatize several update rules for probabilities (and preferen...
International audienceWe present and axiomatize several update rules for probabilities (and preferen...
This paper characterizes several belief-revision rules in a unified framework: Bayesian revision upo...
This paper characterizes several belief-revision rules in a unified framework: Bayesian revision upo...
A probabilistic belief revision function assigns to every initial probabilistic belief and every obs...
When preferences are such that there is no unique additive prior, the issue of which updating rule t...
We present a general framework for representing belief-revision rules and use it to characterise Bay...
We present a general framework for representing belief-revision rules and use it to characterize Bay...
We present a general framework for representing belief-revision rules and use it to characterize Bay...
This paper characterizes different belief revision rules in a unified framework: Bayesian revision u...
We present a general framework for representing belief-revision rules and use it to characterize Bay...
We present a general framework for representing belief-revision rules and use it to characterise Bay...
We provide an axiomatic characterization of Bayesian updating, viewed as a mapping from prior belief...
We provide an axiomatic characterization of Bayesian updating, viewed as a mapping from prior belief...
We provide an axiomatic characterization of Bayesian updating, viewed as a mapping from prior belief...
International audienceWe present and axiomatize several update rules for probabilities (and preferen...
International audienceWe present and axiomatize several update rules for probabilities (and preferen...
This paper characterizes several belief-revision rules in a unified framework: Bayesian revision upo...
This paper characterizes several belief-revision rules in a unified framework: Bayesian revision upo...
A probabilistic belief revision function assigns to every initial probabilistic belief and every obs...
When preferences are such that there is no unique additive prior, the issue of which updating rule t...
We present a general framework for representing belief-revision rules and use it to characterise Bay...
We present a general framework for representing belief-revision rules and use it to characterize Bay...
We present a general framework for representing belief-revision rules and use it to characterize Bay...
This paper characterizes different belief revision rules in a unified framework: Bayesian revision u...
We present a general framework for representing belief-revision rules and use it to characterize Bay...
We present a general framework for representing belief-revision rules and use it to characterise Bay...