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B-tests: Low Variance Kernel Two-Sample Tests

机译:B检验:低方差内核两次抽样检验

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A family of maximum mean discrepancy (MMD) kernel two-sample tests is introduced. Members of the test family are called Block-tests or B-tests, since the test statistic is an average over MMDs computed on subsets of the samples. The choice of block size allows control over the tradeoff between test power and computation time. In this respect, the B-test family combines favorable properties of previously proposed MMD two-sample tests: B-tests are more powerful than a linear time test where blocks are just pairs of samples, yet they are more computationally efficient than a quadratic time test where a single large block incorporating all the samples is used to compute a U-statistic. A further important advantage of the B-tests is their asymptotically Normal null distribution: this is by contrast with the U-statistic, which is degenerate under the null hypothesis, and for which estimates of the null distribution are computationally demanding. Recent results on kernel selection for hypothesis testing transfer seamlessly to the B-tests, yielding a means to optimize test power via kernel choice.
机译:介绍了一系列最大平均差异(MMD)内核两样本测试。由于测试统计量是针对样本子集计算得出的MMD的平均值,因此测试家族的成员称为“ Block-tests”或“ B-tests”。块大小的选择允许控制测试功率和计算时间之间的折衷。在这方面,B检验系列结合了先前提出的MMD两样本检验的良好特性:B检验比线性时间检验(块只是一对样本,但它们的计算效率要高于二次时间)要强于线性时间检验测试将包含所有样本的单个大块用于计算U统计量。 B检验的另一个重要优点是它们的渐近正态零分布:这与U统计量相反,后者在零假设下退化,并且对零分布的估计有计算要求。用于假设测试的内核选择的最新结果无缝地转移到B检验,从而提供了一种通过内核选择来优化测试能力的方法。

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