基于hyperdisk的大间距分类器

Hakan Cevikalp
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引用次数: 3

摘要

本文介绍了一种二元大边距分类器,该分类器用每个类的训练样本构造一个超磁盘来逼近每个类。对于任何用超磁盘近似的类对,都存在一个相应的线性分离超平面,使它们之间的边界最大化,这可以通过求解一个凸程序来找到超磁盘上最近的点对来找到。更准确地说,最佳分离超平面是与连接超圆盘上最近点的线段正交并同时与直线平分的平面。利用核技巧将该方法扩展到非线性情况,并像支持向量机(SVM)分类器那样构造和组合多个二分类器来处理多类分类问题。在多个数据库上的实验表明,该方法优于其他常用的大余量分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large Margin Classifier Based on Hyperdisks
This paper introduces a binary large margin classifier that approximates each class with an hyper disk constructed from its training samples. For any pair of classes approximated with hyper disks, there is a corresponding linear separating hyper plane that maximizes the margin between them, and this can be found by solving a convex program that finds the closest pair of points on the hyper disks. More precisely, the best separating hyper plane is chosen to be the one that is orthogonal to the line segment connecting the closest points on the hyper disks and at the same time bisects the line. The method is extended to the nonlinear case by using the kernel trick, and the multi-class classification problems are dealt with constructing and combining several binary classifiers as in Support Vector Machine (SVM) classifier. The experiments on several databases show that the proposed method compares favorably to other popular large margin classifiers.
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