Symmetry of evidence without evidence of symmetry

成果类型:
Article
署名作者:
Epstein, Larry G.; Seo, Kyoungwon
署名单位:
Boston University; Northwestern University
刊物名称:
THEORETICAL ECONOMICS
ISSN/ISSBN:
1933-6837
DOI:
10.3982/TE596
发表日期:
2010-09-01
页码:
313-368
关键词:
Ambiguity exchangeability symmetry updating learning multiple priors
摘要:
The de Finetti Theorem is a cornerstone of the Bayesian approach. Bernardo (1996, p. 5) writes that its message is very clear: if a sequence of observations is judged to be exchangeable, then any subset of them must be regarded as a random sample from some model, and there exists a prior distribution on the parameter of such model, hence requiring a Bayesian approach. We argue that although exchangeability, interpreted as symmetry of evidence, is a weak assumption, when combined with subjective expected utility theory, it also implies complete confidence that experiments are identical. When evidence is sparse and there is little evidence of symmetry, this implication of de Finetti's hypotheses is not intuitive. This motivates our adoption of multiple-priors utility as the benchmark model of preference. We provide two alternative generalizations of the de Finetti Theorem for this framework. A model of updating is also provided.
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