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Multi-class Classification of Support Vector Machines Based on Double Binary Tree

机译:基于双二叉树的支持向量机的多类分类

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To solve the problems of 'irreversibility', 'error accumulation' and randomicity of classification order in multi-class classification of support vector machines based on binary tree (BT-SVM), the paper proposes a multi-class classification method of support vector machines based on double binary tree (DBT-SVM). According to the method, each sub-classifier of BT-SVM is modified. After unknown samples are classified by the modified BT-SVM, the negative output of its final sub-classifier can be classified again by adding an Auxiliary BT-SVM so that the misclassified samples mixed in the negative output can be classified correctly. Experiment results show that the classification accuracy of earlier classified samples can be improved using DBT-SVM method, while the general classification accuracy does not decrease.
机译:针对基于二叉树(BT-SVM)的支持向量机多类分类中的“不可逆性”,“错误累积”和分类顺序随机性问题,提出了一种支持向量机的多类分类方法。基于双二叉树(DBT-SVM)。根据该方法,修改了BT-SVM的每个子分类器。通过修改后的BT-SVM对未知样本进行分类后,可以通过添加辅助BT-SVM对其最终子分类器的负输出进行再次分类,以便正确分类混合在负输出中的分类错误的样本。实验结果表明,采用DBT-SVM方法可以提高较早分类样本的分类精度,而一般分类精度不会降低。

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