Feature selection using f-information measures in fuzzy approximation spaces

Maji, P. ; Pal, S. K. (2010) Feature selection using f-information measures in fuzzy approximation spaces IEEE Transactions on Knowledge and Data Engineering, 22 (6). pp. 854-867. ISSN 1041-4347

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Official URL: http://ieeexplore.ieee.org/xpl/freeabs_all.jsp?arn...

Related URL: http://dx.doi.org/10.1109/TKDE.2009.124

Abstract

The selection of nonredundant and relevant features of real-valued data sets is a highly challenging problem. A novel feature selection method is presented here based on fuzzy-rough sets by maximizing the relevance and minimizing the redundancy of the selected features. By introducing the fuzzy equivalence partition matrix, a novel representation of Shannon's entropy for fuzzy approximation spaces is proposed to measure the relevance and redundancy of features suitable for real-valued data sets. The fuzzy equivalence partition matrix also offers an efficient way to calculate many more information measures, termed as f-information measures. Several f-information measures are shown to be effective for selecting nonredundant and relevant features of real-valued data sets. This paper compares the performance of different f-information measures for feature selection in fuzzy approximation spaces. Some quantitative indexes are introduced based on fuzzy-rough sets for evaluating the performance of proposed method. The effectiveness of the proposed method, along with a comparison with other methods, is demonstrated on a set of real-life data sets.

Item Type:Article
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ID Code:77716
Deposited On:14 Jan 2012 06:20
Last Modified:14 Jan 2012 06:20

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