Locating support vectors via /spl beta/-skeleton technique

Wan Zhang, Irwin King
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引用次数: 22

Abstract

Recently, support vector machine (SVM) has become a very dynamic and popular topic in the neural network community for its abilities to perform classification, estimation, and regression. One of the major tasks in the SVM algorithm is to locate the points, or rather support vectors, based on which we construct the discriminant boundary in classification task. In the process of studying the methods for finding the decision boundary, we conceive a method, /spl beta/-skeleton algorithm, which reduces the size of the training set for SVM. We describe their theoretical connections and practical implementation implications. In this paper, we also survey four different methods for classification: the SVM method, k-nearest neighbor method, /spl beta/-skeleton algorithm used in the above two methods. Compared with the methods without using /spl beta/-skeleton algorithm, prediction with the edited set obtained from /spl beta/-skeleton algorithm as the training set, does not lose the accuracy too much but reduces the real running time.
通过/spl beta/-skeleton技术定位支持向量
近年来,支持向量机(SVM)因其具有分类、估计和回归的能力而成为神经网络界一个非常活跃和热门的话题。支持向量机算法的主要任务之一是定位点,或者说是支持向量,在此基础上构造分类任务中的判别边界。在研究决策边界寻找方法的过程中,我们提出了一种减少SVM训练集大小的方法——/spl beta/-skeleton算法。我们描述了它们的理论联系和实际实施意义。在本文中,我们还研究了四种不同的分类方法:SVM方法,k-最近邻方法,以上两种方法中使用的/spl beta/-skeleton算法。与不使用/spl beta/-skeleton算法的方法相比,使用/spl beta/-skeleton算法得到的编辑集作为训练集进行预测,在不损失太多精度的同时减少了实际运行时间。
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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