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A fast learning method for large scale and multi-class samples of SVM

机译:一种快速学习方法,用于大规模和多级SVM样本

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A multi-class classification SVM(Support Vector Machine) fast learning method based on binary tree is presented to solve its low learning efficiency when SVM processing large scale multi-class samples. This paper adopts bottom-up method to set up binary tree hierarchy structure, according to achieved hierarchy structure, sub-classifier learns from corresponding samples of each node. During the learning, several class clusters are generated after the first clustering of the training samples. Firstly, central points are extracted from those class clusters which just have one type of samples. For those which have two types of samples, cluster numbers of their positive and negative samples are set respectively according to their mixture degree, secondary clustering undertaken afterwards, after which, central points are extracted from achieved sub-class clusters. By learning from the reduced samples formed by the integration of extracted central points above, sub-classifiers are obtained. Simulation experiment shows that, this fast learning method, which is based on multi-level clustering, can guarantee higher classification accuracy, greatly reduce sample numbers and effectively improve learning efficiency.
机译:基于二叉树的多级分类SVM(支持向量机)快速学习方法,以解决SVM处理大规模多级样本时的低学习效率。本文采用自下而上的方法来设置二进制树层次结构,根据所实现的层次结构,子分类器从每个节点的相应样本中学习。在学习期间,在训练样本的第一次聚类后生成几个类集群。首先,从那些只有一种类型的样品的那些类簇中提取中心点。对于那些具有两种类型样品的那些,根据其混合度,分别根据其混合程度来设定它们的浓度和阴性样品的簇数,之后进行二次聚类,之后,从实现的子类簇中提取中心点。通过从通过上述提取的中心点的集成形成的减少的样本来学习,获得子分类器。仿真实验表明,这种基于多级聚类的快速学习方法可以保证更高的分类准确性,大大减少样品号,有效提高学习效率。

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