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QUASI-BAYESIAN ANALYSIS USING IMPRECISE PROBABILITY ASSESSMENTS AND THE GENERALIZED BAYES' RULE

机译:使用不精确概率评估和广义贝叶斯规则的拟贝叶斯分析

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摘要

The generalized Bayes' rule (GBR) can be used to conduct 'quasi-Bayesian' analyses when prior beliefs are represented by imprecise probability models. We describe a procedure for deriving coherent imprecise probability models when the event space consists of a finite set of mutually exclusive and exhaustive events. The procedure is based on Walley's theory of upper and lower prevision and employs simple linear programming models. We then describe how these models can be updated using Cozman's linear programming formulation of the GBR. Examples are provided to demonstrate how the GBR can be applied in practice. These examples also illustrate the effects of prior imprecision and prior-data conflict on the precision of the posterior probability distribution.
机译:当先验信念由不精确概率模型表示时,广义贝叶斯规则(GBR)可用于进行“拟贝叶斯”分析。当事件空间由相互排斥且穷举的事件的有限集合组成时,我们描述了一种推导相干不精确概率模型的过程。该过程基于Walley的上下限理论,并采用简单的线性编程模型。然后,我们描述如何使用Cozman的GBR线性编程公式来更新这些模型。提供了一些示例来演示如何在实践中应用GBR。这些示例还说明了先验不精确性和先验数据冲突对后验概率分布精度的影响。

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