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Multi-label text categorization based on feature optimization using ant colony optimization and relevance clustering technique

机译:基于特征优化的蚁群优化和关联聚类技术的多标签文本分类

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Feature optimization and feature selection play an important role multi-label text categorization. In multi-label text categorization multiple features share a common class and the process of classification suffered a problem of selection of relevance feature for the classification. In this paper proposed feature optimization based multi-label text categorization. The process of feature optimization is done by ant colony optimization. The ant colony optimization accrued the relevant common feature of document to class. For the process of classification used cluster mapping classification technique. The feature optimization process reduces the loss of data during the transformation of feature mapping during the classification. For the validation of proposed algorithm used some standard dataset such as webpage data, medical search data and RCV1 dataset. Our empirical evaluation shows that proposed algorithm is better than fuzzy relevance technique and other classification technique.
机译:特征优化和特征选择在多标签文本分类中起着重要作用。在多标签文本分类中,多个特征共享一个共同的类,并且分类过程遇到选择用于分类的相关特征的问题。本文提出了基于特征优化的多标签文本分类方法。特征优化的过程是通过蚁群优化来完成的。蚁群优化将文档的相关共同特征归类。对于分类的过程采用了聚类映射分类技术。特征优化过程可减少分类过程中特征映射转换期间的数据丢失。为了验证所提出的算法,使用了一些标准数据集,例如网页数据,医学搜索数据和RCV1数据集。我们的经验评估表明,提出的算法优于模糊关联技术和其他分类技术。

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