Fast SVM-based One-Class Classification in Large Training Sets

M. Kurbakov, V. Sulimova
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Abstract

SVM is one of the popular methods to solve One-Class classification problem. However, it is time and space-consuming. This fact makes it hard or even impossible to apply SVM for large training sets. In this paper we propose fast method (One-Class Kernel-based Mean Decision Rule method, OC-KMDR) to find an approximate decision of One-Class SVM problem. The main advantages of the proposed approach are: 1) the obtained decision is near exact (and in a number of cases the method can outperform the original SVM in quality); 2) the obtained decision has absolutely the same structure as the original SVM; 3) the absence of theoretical restriction for the training set size; 4) it can be realized in an iterative manner but without inter-iteration data dependencies, and, as a result, provides the possibility for effective parallel computing. Experimental study of the proposed OC-KMDR-method in series of simulated large data sets shows that it outperforms existing methods for solving One-Class SVM problem in a computing time or(and) in a decision quality.
基于svm的大型训练集快速单类分类
支持向量机是解决一类分类问题的常用方法之一。然而,这是时间和空间消耗。这一事实使得支持向量机很难甚至不可能应用于大型训练集。本文提出了一种求解一类支持向量机问题近似决策的快速方法(基于一类核的平均决策规则方法,OC-KMDR)。该方法的主要优点是:1)得到的决策接近精确(在许多情况下,该方法在质量上优于原始支持向量机);2)得到的决策与原SVM具有完全相同的结构;3)缺乏对训练集大小的理论限制;4)可以迭代实现,但不存在迭代间的数据依赖,从而为有效的并行计算提供了可能。本文提出的oc - kmdr方法在一系列模拟大数据集上的实验研究表明,该方法在计算时间和决策质量上都优于现有的一类支持向量机问题解决方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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