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Improving Analytical Understanding Through the Addition of Information: Bayesian and Hybrid Mathematics Approaches

机译:通过添加信息来提高对分析的理解:贝叶斯和混合数学方法

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Safety analysts frequently must provide results that are based on sparse (or even no) data. When data (or more data) become available, it is important to utilize the new information optimally in improving the analysis results. Two methods for accomplishing this purpose are Bayesian analysis, where "prior" probability distributions are modified to become "posterior" distributions based on the new data, and hybrid (possibilistic/probabilistic analysis) where possibilistic "membership" portrays the subjectivity involved and the probabilistic analysis is "frequentist." Each of these approaches has interesting features, and it is advantageous to compare and contrast the two. In addition to describing and contrasting these two approaches, we will discuss how features of each can be combined to give new advantages neither offers by itself.
机译:安全分析人员经常必须提供基于稀疏(甚至没有)数据的结果。当有数据(或更多数据)可用时,重要的是在改善分析结果时最佳利用新信息。达到此目的的两种方法是贝叶斯分析,其中基于新数据将“先验”概率分布修改为“后验”分布;以及混合(可能性/概率分析),其中可能性“成员资格”描述了所涉及的主观性和概率分析是“常客”。这些方法中的每一种都具有有趣的功能,并且比较和对比这两种方法是有利的。除了描述和对比这两种方法外,我们还将讨论如何结合使用每种方法的功能,以单独提供既未提供的新优势。

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