Fuzzy Systems - Theory and Applications 2022
DOI: 10.5772/intechopen.96385
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Data Clustering for Fuzzyfier Value Derivation

Abstract: The fuzzifier value m is improving significant factor for achieving the accuracy of data. Therefore, in this chapter, various clustering method is introduced with the definition of important values for clustering. To adaptively calculate the appropriate purge value of the gap type −2 fuzzy c-means, two fuzzy values m1 and m2 are provided by extracting information from individual data points using a histogram scheme. Most of the clustering in this chapter automatically obtains determination of m1 and m2 values … Show more

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Cited by 2 publications
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