A Hierarchical Classification Model Based on Granular Computing

Yinghua He, Bing Liu, Kunlong Zhang
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Abstract

In this paper, after a brief overview of the existing methods, we present a new hierarchical classification algorithm based on quotient space theory of the granular computing. This algorithm deals with the samples from coarse to fine both in the training and testing processes. A group of classifiers are firstly trained by the samples generated under different quotient space. Then the trained classifiers will be used to label the testing samples set hierarchically. In our method, Support Vector Machines is chosen to acquire the discrimination function between two classes in the training processes. And the hypercubes which represent support vectors are subdivided to generate the samples set for training and testing under different quotient space. Finally, experimental results have substantiated the effectiveness of the proposed method.
基于颗粒计算的分层分类模型
本文在简要概述现有分类方法的基础上,提出了一种基于商空间理论的分层分类算法。该算法在训练和测试过程中对样本进行从粗到精的处理。首先利用不同商空间下生成的样本训练一组分类器。然后使用训练好的分类器对测试样本集进行分层标记。在我们的方法中,选择支持向量机来获取训练过程中两类之间的区分函数。并对代表支持向量的超立方体进行细分,生成不同商空间下的训练和测试样本集。最后,实验结果验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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