一种改进的二叉树结构分层多类支持向量机

Lili Cheng, Jianpei Zhang, Jing Yang, Jun Ma
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引用次数: 36

摘要

针对现有方法存在不可分类区域等缺点,改进了基于特征空间中类相似度的分层二叉树多类支持向量机(BTMSVM)。采用考虑类距离和特征空间分布范围的类相似度来确定分层多类支持向量机的分类顺序。有选择地重新构造学习样本和相应的SVM子分类器,以确保分类裕度越大,泛化能力越强。仿真实验结果表明,该方法具有较快的训练和分类速度,较好的分类正确性和泛化性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Hierarchical Multi-class Support Vector Machine with Binary Tree Architecture
A hierarchical binary tree multi-class support vector machine (BTMSVM) based on class similarity in feature space is improved to overcome the drawbacks such as unclassifiable region which the existent methods have. The class similarity which considers class distance and distribution sphere in feature space is used to determine the classification order of hierarchical multi-class SVM. The learning samples and corresponding SVM sub-classifier are selectively re-constructed to make sure as bigger as classification margin, as much as generalization ability. The results of simulated experiments show that the proposed method is faster in training and classifying, better in classification correctness and generalization.
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