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Inversion of Bayes formula and measures of Bayesian information gain and pairwise dependence

机译:贝叶斯公式的反演及贝叶斯信息增益和成对依赖的度量

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By inverting the Bayes formula in a point-wise manner, we develop measures quantifying the information gained by the Bayesian process, in reference to the Fisher information. Simple examples are used for focused illustrations of the ideas. Numerical computation for the measures is discussed with formulae. By extending the information gain concept to the broader context of distribution theory, we arrive at a pairwise dependence measure, which can handle the case of functional dependence and becomes Pearson’s $phi^2$ when the joint probability density function is defined.
机译:通过以点方式反转贝叶斯公式,我们参考Fisher信息开发了量化贝叶斯过程获得的信息的措施。简单的示例用于集中说明这些想法。用公式讨论了措施的数值计算。通过将信息增益概念扩展到分布理论的更广泛上下文中,我们得出了成对依赖度量,它可以处理函数依赖的情况,并且在定义联合概率密度函数时变为Pearson的 phi ^ 2 $。

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