基于相似性聚类的分层支持向量机多类分类

Chao Dong, Bo Zhou, Jinglu Hu
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引用次数: 8

摘要

本文提出了一种构建多树层次结构支持向量机的新策略,可以得到更高效、更准确的多类问题分类模型。基于二叉树支持向量机(BTS)的理论,提出了一种改进算法,将二叉树结构扩展到多树结构,在多树层次结构中,提出了相似聚类方法,将类聚到每个非叶节点上的组。为了得到多节点划分,采用单对全(one-against-all, OAA)方法来训练这些组而不是类。该方法可以避免OAA中出现的数据不平衡问题,并且上层分类器的分类面积大于下层分类器。在大量数据集上的实验表明,与其他几种知名方法相比,我们的方法可以减少测试阶段的分类器数量,并获得更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hierarchical SVM based multiclass classification by using similarity clustering
This paper presents a new strategy to build multi tree hierarchical structure SVM which can get a more efficient and accuracy classification model for multiclass problems. Base on the theory of Binary Tree SVM (BTS), we proposed an improvement algorithm which extend binary tree structure to a multi tree structure, In the multi tree hierarchical structure, similarity clustering method was proposed to cluster classes to groups in each non-leaf node. In order to get a multi node division, one-against-all (OAA) was applied to train those groups rather than classes. The proposed method can avoid data imbalanced problem occurred in OAA, also the classification area of classifier in the upper layer is larger than classifier in lower layer. Compared with other several well-known methods, experiments on many data sets demonstrate that our method can reduce the number of classifiers in the testing phase and get a higher accuracy.
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