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Bregman divergences based on optimal design criteria and simplicial measures of dispersion

机译:基于最优设计标准和分散措施的基于优化设计标准的Bregman分歧

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摘要

In previous work the authors defined the k-th order simplicial distance between probability distributions which arises naturally from a measure of dispersion based on the squared volume of random simplices of dimension k. This theory is embedded in the wider theory of divergences and distances between distributions which includes Kullback-Leibler, Jensen-Shannon, Jeffreys-Bregman divergence and Bhattacharyya distance. A general construction is given based on defining a directional derivative of a function phi from one distribution to the other whose concavity or strict concavity influences the properties of the resulting divergence. For the normal distribution these divergences can be expressed as matrix formula for the (multivariate) means and covariances. Optimal experimental design criteria contribute a range of functionals applied to non-negative, or positive definite, information matrices. Not all can distinguish normal distributions but sufficient conditions are given. The k-th order simplicial distance is revisited from this aspect and the results are used to test empirically the identity of means and covariances.
机译:在以前的工作中,作者定义了基于基于尺寸k的随机量的平方体积的分散量自然出现的概率分布之间的千阶阶段。该理论嵌入了更广泛的分歧理论和分布之间的距离,其中包括克拉尔莱布勒,Jensen-Shannon,Jeffreys-Bregman发散和Bhattacharyya距离。基于将功能PHI的定向导数从一个分布定义为另一个分布的定向衍生物,给出了一般结构,其凹陷或严格凹陷影响所得发散的性质。对于正常分布,这些分歧可以表示为(多变量)方式和协方差的矩阵公式。最佳实验设计标准有助于应用于非负数或正定信息矩阵的一系列功能。并非所有人都可以区分正常分布,但提供了充分的条件。从这个方面重访k-th阶简单距离,结果用于经验测试手段和协方差的身份。

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