特征和通用张量积核

Z. Szabó, Bharath K. Sriperumbudur
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引用次数: 60

摘要

最大平均差异(MMD)在统计学中也称为能量距离或n距离,Hilbert-Schmidt独立准则(HSIC)在统计学中具体称为距离协方差,分别是量化随机变量差异和独立性的最流行和最成功的方法。由于其基于内核的基础,MMD和HSIC适用于各种领域。尽管它们取得了巨大的成功,但对于HSIC何时表征独立性以及具有张量积核的MMD何时能够区分概率分布,人们知之甚少。本文通过研究张量积核的各种特征性质来回答这些问题。
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Characteristic and Universal Tensor Product Kernels
Maximum mean discrepancy (MMD), also called energy distance or N-distance in statistics and Hilbert-Schmidt independence criterion (HSIC), specifically distance covariance in statistics, are among the most popular and successful approaches to quantify the difference and independence of random variables, respectively. Thanks to their kernel-based foundations, MMD and HSIC are applicable on a wide variety of domains. Despite their tremendous success, quite little is known about when HSIC characterizes independence and when MMD with tensor product kernel can discriminate probability distributions. In this paper, we answer these questions by studying various notions of characteristic property of the tensor product kernel.
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