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q-OCSVM: A q-Quantile Estimator for High-Dimensional Distributions

机译:Q-OCSVM:高维分布的Q定量估计器

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In this paper we introduce a novel method that can efficiently estimate a family of hierarchical dense sets in high-dimensional distributions. Our method can be regarded as a natural extension of the one-class SVM (OCSVM) algorithm that finds multiple parallel separating hyperplanes in a reproducing kernel Hilbert space. We call our method q-OCSVM, as it can be used to estimate q quantiles of a high-dimensional distribution. For this purpose, we introduce a new global convex optimization program that finds all estimated sets at once and show that it can be solved efficiently. We prove the correctness of our method and present empirical results that demonstrate its superiority over existing methods.
机译:在本文中,我们介绍了一种新的方法,可以有效地估计高维分布中的分层致密集合。我们的方法可以被视为单级SVM(OCSVM)算法的自然扩展,该算法在再现内核希尔伯特空间中找到多个并行分离超平面。我们调用我们的方法q-ocsvm,因为它可用于估计高维分布的q量子。为此目的,我们介绍了一个新的全局凸优化程序,一次找到所有估计的集合并显示它可以有效解决。我们证明了我们方法的正确性,并提出了展示其对现有方法优势的实证结果。

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