Measuring Hilbert-Schmidt Independence Criterion with Different Kernels

Chenge Hu, Huaqing Zhang, Yuyu Zhou, Ruixin Guan
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Abstract

Hilbert-Schmidt independence criterion (HSIC) which is a kernel-based method for testing statistical dependence between two random variables. It is widely applied in a variety of areas. However, this approach comes with a question of the selection of kernel functions. In this paper, we conduct an experiment using the forest fire data from UCI in the context of independence test, contrasting four commonly used kernel functions: Linear kernels, Gaussian kernels, Brownian kernels, Matern kernels. Through comparing p-value and rejection rate of hypothesis test we constructed; it is shown that the different choices in associated kernel function of HSIC give comparable performance on results.
用不同核测量Hilbert-Schmidt独立准则
希尔伯特-施密特独立准则(Hilbert-Schmidt independence criterion, HSIC)是一种基于核函数的检验两个随机变量之间统计相关性的方法。它被广泛应用于各种领域。然而,这种方法带来了核函数选择的问题。本文利用UCI的森林火灾数据,在独立性检验的背景下进行了实验,对比了四种常用的核函数:线性核函数、高斯核函数、布朗核函数和Matern核函数。通过比较假设检验的p值和拒绝率,我们构造了;结果表明,HSIC相关核函数的不同选择对结果的影响是相当的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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