Order Based Genetic Algorithms for the Search of Approximate Entropy Reducts
نویسندگان
چکیده
We use entropy to extend the rough set based notion of a reduct. We show that the order based genetic algorithms, applied to the search of classical decision reducts, can be used in exactly the same way in case of extracting optimal approximate entropy reducts from data.
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