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Granular conditional entropy-based attribute reduction for partially labeled data with proxy labels

Authors :
Gao, Can
Zhoua, Jie
Miao, Duoqian
Yue, Xiaodong
Wan, Jun
Publication Year :
2021

Abstract

Attribute reduction is one of the most important research topics in the theory of rough sets, and many rough sets-based attribute reduction methods have thus been presented. However, most of them are specifically designed for dealing with either labeled data or unlabeled data, while many real-world applications come in the form of partial supervision. In this paper, we propose a rough sets-based semi-supervised attribute reduction method for partially labeled data. Particularly, with the aid of prior class distribution information about data, we first develop a simple yet effective strategy to produce the proxy labels for unlabeled data. Then the concept of information granularity is integrated into the information-theoretic measure, based on which, a novel granular conditional entropy measure is proposed, and its monotonicity is proved in theory. Furthermore, a fast heuristic algorithm is provided to generate the optimal reduct of partially labeled data, which could accelerate the process of attribute reduction by removing irrelevant examples and excluding redundant attributes simultaneously. Extensive experiments conducted on UCI data sets demonstrate that the proposed semi-supervised attribute reduction method is promising and even compares favourably with the supervised methods on labeled data and unlabeled data with true labels in terms of classification performance.<br />Comment: 22 pages, 5 figures, and 5 tables. Preprint submitted to Information Sciences

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2101.09495
Document Type :
Working Paper