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Feature subset selection based on mahalanobis distance: a statistical rough set method 被引量:1

Feature subset selection based on mahalanobis distance: a statistical rough set method
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摘要 In order to select effective feature subsets for pattern classification, a novel statistics rough set method is presented based on generalized attribute reduction. Unlike classical reduction approaches, the objects in universe of discourse are signs of training sample sets and values of attributes are taken as statistical parameters. The binary relation and discernibility matrix for the reduction are induced by distance function. Furthermore, based on the monotony of the distance function defined by Mahalanobis distance, the effective feature subsets are obtained as generalized attribute reducts. Experiment result shows that the classification performance can be improved by using the selected feature subsets. In order to select effective feature subsets for pattern classification, a novel statistics rough set method is presented based on generalized attribute reduction. Unlike classical reduction approaches, the objects in universe of discourse are signs of training sample sets and values of attributes are taken as statistical parameters. The binary relation and discernibility matrix for the reduction are induced by distance function. Furthermore, based on the monotony of the distance function defined by Mahalanobis distance, the effective feature subsets are obtained as generalized attribute reducts. Experiment result shows that the classification performance can be improved by using the selected feature subsets.
作者 孙亮 韩崇昭
出处 《Journal of Pharmaceutical Analysis》 SCIE CAS 2008年第1期14-18,共5页 药物分析学报(英文版)
基金 This work was supported by the National Basic Research Program of China(No.2001CB309403)
关键词 feature subset selection rough set attribute reduction Mahalanobis distance feature subset selection rough set attribute reduction Mahalanobis distance
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