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首页> 外文期刊>Journal of machine learning research >Kernel Distribution Embeddings: Universal Kernels, Characteristic Kernels and Kernel Metrics on Distributions
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Kernel Distribution Embeddings: Universal Kernels, Characteristic Kernels and Kernel Metrics on Distributions

机译:内核分布嵌入:通用内核,特征内核和核心分布式核心度量

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Kernel mean embeddings have become a popular tool in machine learning. They map probability measures to functions in a reproducing kernel Hilbert space. The distance between two mapped measures defines a semi-distance over the probability measures known as the maximum mean discrepancy (MMD). Its properties depend on the underlying kernel and have been linked to three fundamental concepts of the kernel literature: universal, characteristic and strictly positive definite kernels. The contributions of this paper are three-fold. First, by slightly extending the usual definitions of universal, characteristic and strictly positive definite kernels, we show that these three concepts are essentially equivalent. Second, we give the first complete characterization of those kernels whose associated MMD-distance metrizes the weak convergence of probability measures. Third, we show that kernel mean embeddings can be extended from probability measures to generalized measures called Schwartz-distributions and analyze a few properties of these distribution embeddings.
机译:内核平均嵌入式已成为机器学习中的流行工具。它们将概率措施映射到再现内核希尔伯特空间中的功能。两个映射测量之间的距离定义了已知最大均值差异(MMD)的概率测量上的半距离。其特性取决于底层内核,并已联系到内核文献的三个基本概念:普遍,特征和严格的核心内核。本文的贡献是三倍。首先,通过略微扩展普遍,特征和严格的明确内核的通常定义,我们表明这三个概念基本上是等同的。其次,我们给出了那些相关的MMD距离对概率措施弱收敛性的核心的第一个完整表征。第三,我们表明内核平均嵌入物可以从概率措施扩展到名为Schwartz分布的广义测量,并分析了这些分布嵌入的几个属性。

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