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Maximal margin classification for metric spaces

机译:度量空间的最大边距分类

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摘要

In order to apply the maximum margin method in arbitrary metric spaces, we suggest to embed the metric space into a Banach or Hilbert space and to perform linear classification in this space. We propose several embeddings and recall that an isometric embedding in a Banach space is always possible while an isometric embedding in a Hilbert space is only possible for certain metric spaces. As a result, we obtain a general maximum margin classification algorithm for arbitrary metric spaces (whose solution is approximated by an algorithm of Graepel et al. (International Conference on Artificial Neural Networks 1999, pp. 304-309)). Interestingly enough, the embedding approach, when applied to a metric which can be embedded into a Hilbert space, yields the support vector machine (SVM) algorithm, which emphasizes the fact that its solution depends on the metric and not on the kernel. Furthermore, we give upper bounds of the capacity of the function classes corresponding to both embeddings in terms of Rademacher averages. Finally, we compare the capacities of these function classes directly. (c) 2004 Elsevier Inc. All rights reserved.
机译:为了将最大余量方法应用于任意度量空间,我们建议将度量空间嵌入到Banach或Hilbert空间中,并在该空间中执行线性分类。我们提出了几种嵌入方式,并回忆说,在Banach空间中总是可以进行等距嵌入,而在希尔伯特空间中只能对某些度量空间进行等距嵌入。结果,我们获得了针对任意度量空间的通用最大余量分类算法(其解决方案由Graepel等人的算法近似(国际人工神经网络会议,1999年,第304-309页))。有趣的是,将嵌入方法应用于可以嵌入希尔伯特空间的度量时,会产生支持向量机(SVM)算法,该算法强调了其解决方案取决于度量而不是内核的事实。此外,我们根据Rademacher平均值给出了与两个嵌入相对应的函数类的容量上限。最后,我们直接比较这些函数类的容量。 (c)2004 Elsevier Inc.保留所有权利。

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