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Probabilistic Abduction Without Priors

机译:没有先验的概率绑架

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This paper considers the simple problem of abduction in the framework of Bayes theorem, when the prior probability of the hypothesis is not available, either because there are no statistical data to rely on, or simply because a human expert is reluctant to provide a subjective assessment of this prior probability. This abduction problem remains an open issue since a simple sensitivity analysis on the value of the unknown prior yields empty results. This paper tries to propose some criteria a solution to this problem should satisfy. It then surveys and comments on various existing or new solutions to this problem: the use of likelihood functions (as in classical statistics), the use of information principles like maximum entropy, Shapley value, maximum likelihood. The formal setting includes de Finetti's coherence approach, which does not exclude conditioning on contingent events with zero probability. We show that the ad hoc likelihood function method, that can be reinterpreted in terms of possibility theory, is consistent with most other formal approaches. However, the maximum entropy solution is significantly different, despite some formal analogies.
机译:本文在贝叶斯定理的框架内考虑了简单的绑架问题,该假设的先验概率不可用时,要么是因为没有统计数据可依赖,要么是因为人类专家不愿提供主观评估先验概率。这个绑架问题仍然是一个未解决的问题,因为对未知先验值的简单敏感性分析会得出空洞的结果。本文试图提出一些解决该问题的标准。然后,它针对此问题的各种现有或新解决方案进行调查和评论:使用似然函数(如经典统计中的方法),使用信息原理(例如最大熵,Shapley值,最大似然)。正式设置包括de Finetti的连贯性方法,该方法不排除以零概率对偶然事件进行调节的条件。我们表明,可以用可能性理论重新解释的临时可能性函数方法与大多数其他形式方法是一致的。然而,尽管有一些形式上的类比,最大熵解还是有很大不同的。

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