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A generalization of the fundamental theorem of de Finetti for imprecise conditional probability assessments

โœ Scribed by Veronica Biazzo; Angelo Gilio


Publisher
Elsevier Science
Year
2000
Tongue
English
Weight
175 KB
Volume
24
Category
Article
ISSN
0888-613X

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โœฆ Synopsis


In this paper, we consider coherent imprecise probability assessments on ยฎnite families of conditional events and we study the problem of their extension. With this aim, we adopt a generalized deยฎnition of coherence, called g-coherence, which is based on a suitable generalization of the coherence principle of de Finetti. At ยฎrst, we recall some theoretical results and an algorithm obtained in some previous papers where the case of precise conditional probability assessments has been studied. Then, we extend these results to the case of imprecise probabilistic assessments and we obtain a theorem which can be looked at as a generalization of the version of the fundamental theorem of de Finetti given by some authors for the case of conditional events. Our algorithm can also be exploited to produce lower and upper probabilities which are coherent in the sense of Walley and Williams. Moreover, we compare our approach to similar ones, like probability logic or probabilistic deduction. Finally, we apply our algorithm to some well-known inference rules assuming some logical relations among the given events.


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