A Fast Incremental Learning Algorithm Based on Twin Support Vector Machine

Yunhe Hao, Haofeng Zhang
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引用次数: 5

Abstract

Twin support vector machine is a novel classifier, it construct two nonparallel hyper planes instead of a single hyper plane to obtain four times faster than the usual SVM. With the result of traditional incremental learning method of SVM, we analyze the characteristics of twin support vector machine and the distribution of the training sample set. In this paper, we propose a fast incremental learning algorithm based on twin support vector machine. It can deal with the newly added training samples and utilize the result of the previous training effectively. Experimental results prove that the given algorithm has excellent classification performance on runtime and recognition rate, and therefore confirm the above conclusion further.
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基于双支持向量机的快速增量学习算法
双支持向量机是一种新型的分类器,它构造了两个非平行的超平面而不是单个的超平面,其速度是一般支持向量机的4倍。在传统支持向量机增量学习方法的基础上,分析了双支持向量机的特点和训练样本集的分布。本文提出了一种基于双支持向量机的快速增量学习算法。它可以处理新增加的训练样本,并有效地利用之前的训练结果。实验结果证明,该算法在运行时间和识别率上都具有优异的分类性能,从而进一步证实了上述结论。
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