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A Loose-Pattern Process Approach to Clustering Fuzzy Data Sets | IEEE Journals & Magazine | IEEE Xplore

A Loose-Pattern Process Approach to Clustering Fuzzy Data Sets


Abstract:

A loose-pattern process approach to clustering sets consists of three main computations: loose-pattern reject option, tight-pattern classifcation, and loose-pattern assig...Show More

Abstract:

A loose-pattern process approach to clustering sets consists of three main computations: loose-pattern reject option, tight-pattern classifcation, and loose-pattern assigning classes. The loose-pattern rejection is implemented using a rule based on q nearest neighbors of each point. Two clustering methods, GLC and OUPIC, are introduced as tight-pattern clustering techniques. The decisions of loose-pattern assigning classes are related to a heuristic membership function. The function and experiments with one set is discussed.
Page(s): 366 - 372
Date of Publication: 31 May 1985

ISSN Information:

PubMed ID: 21869275

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