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Multi-Label Feature Selection Combining Three Types of Conditional Relevance
Authors:Lingbo Gao  Yiqiang Wang  Yonghao Li  Ping Zhang  Liang Hu
Institution:1.College of Computer Science and Technology, Jilin University, Changchun 130012, China; (L.G.); (Y.W.); (Y.L.); (P.Z.);2.Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education, Jilin University, Changchun 130012, China
Abstract:With the rapid growth of the Internet, the curse of dimensionality caused by massive multi-label data has attracted extensive attention. Feature selection plays an indispensable role in dimensionality reduction processing. Many researchers have focused on this subject based on information theory. Here, to evaluate feature relevance, a novel feature relevance term (FR) that employs three incremental information terms to comprehensively consider three key aspects (candidate features, selected features, and label correlations) is designed. A thorough examination of the three key aspects of FR outlined above is more favorable to capturing the optimal features. Moreover, we employ label-related feature redundancy as the label-related feature redundancy term (LR) to reduce unnecessary redundancy. Therefore, a designed multi-label feature selection method that integrates FR with LR is proposed, namely, Feature Selection combining three types of Conditional Relevance (TCRFS). Numerous experiments indicate that TCRFS outperforms the other 6 state-of-the-art multi-label approaches on 13 multi-label benchmark data sets from 4 domains.
Keywords:feature selection  information theory  feature relevance  label-related feature redundancy  conditional relevance
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