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Margin Classification for Metric Spaces

机译:度量空间的边距分类

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In this article we construct a maximal margin classification algorithm for arbitrary metric spaces. At first we show that the Support Vector Machine (SVM) is a maximal margin algorithm for the class of metric spaces where the negative squared distance is conditionally positive definite (CPD). This means that the metric space can be isometri-cally embedded into a Hilbert space, where one performs linear maximal margin separation. We will show that the solution only depends on the metric, but not on the kernel. Following the framework we develop for the SVM, we construct an algorithm for maximal margin classification in arbitrary metric spaces. The main difference compared with SVM is that we no longer embed isometrically into a Hilbert space, but a Ba-nach space. We further give an estimate of the capacity of the function class involved in this algorithm via Rademacher averages. We recover an algorithm of Graepel et al. [6].
机译:在本文中,我们为任意度量空间构造了最大边距分类算法。首先,我们证明了支持向量机(SVM)是度量空间类别的最大余量算法,其中负平方距离是有条件的正定(CPD)。这意味着度量空间可以等距地嵌入到希尔伯特空间中,在希尔伯特空间中执行线性最大边距分离。我们将显示解决方案仅取决于指标,而不取决于内核。按照我们为SVM开发的框架,我们构造了一种用于在任意度量空间中进行最大边距分类的算法。与SVM相比,主要区别在于我们不再等距地嵌入希尔伯特空间,而是Ba-nach空间。我们通过Rademacher平均值进一步估计了此算法中涉及的函数类的容量。我们恢复了Graepel等人的算法。 [6]。

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