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A Feature Selection Approach Based on Interclass and Intraclass Relative Contributions of Terms

机译:基于临床和术语相对贡献的特征选择方法

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Feature selection plays a critical role in text categorization. During feature selecting, high-frequency terms and the interclass and intraclass relative contributions of terms all have significant effects on classification results. So we put forward a feature selection approach, IIRCT, based on interclass and intraclass relative contributions of terms in the paper. In our proposed algorithm, three critical factors, which are term frequency and the interclass relative contribution and the intraclass relative contribution of terms, are all considered synthetically. Finally, experiments are made with the help of kNN classifier. And the corresponding results on 20 NewsGroup and SougouCS corpora show that IIRCT algorithm achieves better performance than DF, t-Test, and CMFS algorithms.
机译:功能选择在文本分类中播放关键作用。 在特征选择期间,高频术语和临床和跨越的术语相对贡献都对分类结果产生了显着影响。 因此,我们基于纸张中的杂项和内部术语,提出了一种特征选择方法IIRCT。 在我们所提出的算法中,三个关键因素是术语频率和跨越相对贡献以及术语内部术语的相对贡献,都是合成的。 最后,在KNN分类器的帮助下进行实验。 和20次新闻组和Sougoucs Corpora的相应结果表明,IIRCT算法比DF,T检验和CMFS算法实现了更好的性能。

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