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Paper:
Language: English:

An Efficient Method for Extracting Fuzzy Classification Rules from High Dimensional Data


Stephen L. Chin


Rockwell Science Center, 1049 Camino Dos Rios Thousand Oaks, California 91360, USA


Received: March 30, 1997

Accepted: May 20, 1997


Keywords: Clustering, Classification, Fuzzy rule learning, Feature selection

Journal ref: Journal of Advanced Computational Intelligence and Intelligent Informatics, Vol.1, No.1 pp. 31-36, 1997

Abstract



We present an efficient method for extracting fuzzy classification rules from high dimensional data. A cluster estimation method called subtractive clustering is used to efficiently extract rules from a high dimensional feature space. A complementary search method can quickly identify the important input features from the resultant high dimensional fuzzy classifier, and thus provides the ability to quickly generate a simpler, more robust fuzzy classifier that uses a minimal number of input features. These methods are illustrated through the benchmark iris data and through two aerospace applications.
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