Distance Classifier Ensemble Based on Intra-Class and Inter-Class Scatter

Yaqin Guo
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Abstract

Distance classifier ensemble method based on Intra-class and Inter-class Scatter is proposed in this paper. By Bootstrap technology, the training samples are sampled repeatedly to generate several subsample set, define Intra-class and Inter-class Scatter matrix with subsample set, train subsample set with scatter matrix, generate individual classifier. In the classifier ensemble, the results are integrated with the relative majority voting method. Experiment is tested on UCI standard database, the experimental results show that the proposed ensemble method based on Intra-class and Inter-class Scatter for distance classifier is effective, and it is superior to other methods in classification performance.
基于类内和类间散点的距离分类器集成
提出了一种基于类内和类间散射的距离分类器集成方法。通过Bootstrap技术,对训练样本进行重复采样,生成多个子样本集,用子样本集定义类内和类间散点矩阵,用散点矩阵训练子样本集,生成单个分类器。在分类器集成中,结果与相对多数投票法相结合。在UCI标准数据库上进行了实验测试,实验结果表明,基于类内和类间散射的距离分类器集成方法是有效的,并且在分类性能上优于其他方法。
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