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Data-Driven Representations for Testing Independence: A Connection with Mutual Information Estimation

机译:测试独立性的数据驱动表示形式:与相互信息估计的连接

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From the design of a data-driven partition, this paper addresses the problem of testing independence between two multidimensional random variables from i.i.d. samples. The empirical log-likelihood statistics is adopted with the objective of approximating the sufficient statistics of a test against independence that knows the two distributions (the oracle test). It is shown that approximating the sufficient statistics of the oracle test (asymptotically) offers a connection with the problem of estimating mutual information. Applying these ideas in the context of a data-dependent tree-structured partition (TSP), we derive concrete sufficient conditions on the parameters of the TSP scheme to obtain a strongly consistent test of independence distribution-free over the family of joint probabilities equipped with densities.
机译:从数据驱动分区的设计出发,本文解决了测试来自i.i.d的两个多维随机变量之间的独立性的问题。样品。采用经验对数似然统计的目的是,针对已知两个分布的独立性检验(oracle检验),对足够的统计量进行近似估计。结果表明,近似(渐近)oracle检验的足够统计量与估计互信息的问题有关。将这些思想应用到数据相关的树状结构分区(TSP)的上下文中,我们得出了TSP方案参数的具体充分条件,从而获得了在具有密度。

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