Attribute reduction based on generalized fuzzy evidence theory in fuzzy decision systems

Fuzzy Sets and Systems(2011)

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摘要
Attribute reduction is viewed as an important issue in data mining and knowledge representation. This paper studies attribute reduction in fuzzy decision systems based on generalized fuzzy evidence theory. The definitions of several kinds of attribute reducts are introduced. The relationships among these reducts are then investigated. In a fuzzy decision system, it is proved that the concepts of fuzzy positive region reduct, lower approximation reduct and generalized fuzzy belief reduct are all equivalent, the concepts of fuzzy upper approximation reduct and generalized fuzzy plausibility reduct are equivalent, and a generalized fuzzy plausibility consistent set must be a generalized fuzzy belief consistent set. In a consistent fuzzy decision system, an attribute set is a generalized fuzzy belief reduct if and only if it is a generalized fuzzy plausibility reduct. But in an inconsistent fuzzy decision system, a generalized fuzzy belief reduct is not a generalized fuzzy plausibility reduct in general.
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关键词
generalized fuzzy evidence theory,attribute reduction,fuzzy plausibility consistent set,generalized fuzzy belief,reducts,consistent fuzzy decision system,fuzzy positive region reduct,fuzzy decision systems,inconsistent fuzzy decision system,fuzzy upper approximation reduct,fuzzy decision system,generalized fuzzy belief reduct,generalized fuzzy plausibility reduct,data mining,knowledge representation
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