Application of Fuzzy-rough Set Theory for Feature Subset Selection
نویسنده
چکیده
Fuzzy Set Theory and Rough Set Theory are the most popular mathematical tools for dealing with uncertainties. During past decades, these set theories are being applied successfully in several areas for solving many complex tasks. This paper is concerned with the application of hybrid Fuzzy-Rough set based approach for feature subset selection. Keywords— Fuzzy set theory, Rough Set theory, FuzzyRough set theory, Feature Subset Selection.
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