Iterated Belief Change and the Recovery Axiom

被引:0
|
作者
Samir Chopra
Aditya Ghose
Thomas Meyer
Ka-Shu Wong
机构
[1] Brooklyn College of the City University of New York,Department of Computer and Information Science
[2] University of Wollongong,Decision Systems Laboratory, School of Information Technology and Computer Science
[3] Meraka Institute,Knowledge Representation and Reasoning Program National ICT Australia
[4] Kensington Research Laboratory,undefined
来源
Journal of Philosophical Logic | 2008年 / 37卷
关键词
epistemic states; iterated belief change; recovery axiom;
D O I
暂无
中图分类号
学科分类号
摘要
The axiom of recovery, while capturing a central intuition regarding belief change, has been the source of much controversy. We argue briefly against putative counterexamples to the axiom—while agreeing that some of their insight deserves to be preserved—and present additional recovery-like axioms in a framework that uses epistemic states, which encode preferences, as the object of revisions. This makes iterated revision possible and renders explicit the connection between iterated belief change and the axiom of recovery. We provide a representation theorem that connects the semantic conditions we impose on iterated revision and our additional syntactical properties. We show interesting similarities between our framework and that of Darwiche–Pearl (Artificial Intelligence 89:1–29 1997). In particular, we show that intuitions underlying the controversial (C2) postulate are captured by the recovery axiom and our recovery-like postulates (the latter can be seen as weakenings of (C2)). We present postulates for contraction, in the same spirit as the Darwiche–Pearl postulates for revision, and provide a theorem that connects our syntactic postulates with a set of semantic conditions. Lastly, we show a connection between the contraction postulates and a generalisation of the recovery axiom.
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页码:501 / 520
页数:19
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