作者
MF Zaiyadi, B Baharudin
发表日期
2010/12/22
期刊
International Journal of Computer and Information Engineering
卷号
4
期号
12
页码范围
1799-1803
简介
Text document categorization involves large amount of data or features. The high dimensionality of features is a troublesome and can affect the performance of the classification. Therefore, feature selection is strongly considered as one of the crucial part in text document categorization. Selecting the best features to represent documents can reduce the dimensionality of feature space hence increase the performance. There were many approaches has been implemented by various researchers to overcome this problem. This paper proposed a novel hybrid approach for feature selection in text document categorization based on Ant Colony Optimization (ACO) and Information Gain (IG). We also presented state-of-the-art algorithms by several other researchers.
引用总数
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MF Zaiyadi, B Baharudin - International Journal of Computer and Information …, 2010