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Two-sample Statistics Based on Anisotropic Kernels

14 September 2017
Xiuyuan Cheng
A. Cloninger
Ronald R. Coifman
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Abstract

The paper introduces a new kernel-based Maximum Mean Discrepancy (MMD) statistic for measuring the distance between two distributions given finitely-many multivariate samples. When the distributions are locally low-dimensional, the proposed test can be made more powerful to distinguish certain alternatives by incorporating local covariance matrices and constructing an anisotropic kernel. The kernel matrix is asymmetric; it computes the affinity between nnn data points and a set of nRn_RnR​ reference points, where nRn_RnR​ can be drastically smaller than nnn. While the proposed statistic can be viewed as a special class of Reproducing Kernel Hilbert Space MMD, the consistency of the test is proved, under mild assumptions of the kernel, as long as ∥p−q∥n→∞\|p-q\| \sqrt{n} \to \infty ∥p−q∥n​→∞, and a finite-sample lower bound of the testing power is obtained. Applications to flow cytometry and diffusion MRI datasets are demonstrated, which motivate the proposed approach to compare distributions.

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