A projection based method for sparse fuzzy system generation

A. Chong, T. D. Gedeon, L. Kóczy

Research output: Chapter in Book/Report/Conference proceedingChapter

11 Citations (Scopus)

Abstract

A projection based method for sparse fuzzy system generation is proposed. Given a set of training data, clustering is first performed on the output space. Data points from each output cluster are projected back to each input dimension forming one-dimensional clusters. The clusters from different dimension are then merged to form fuzzy rules. Experiments have confirmed the effectiveness of the proposed technique.

Original languageEnglish
Title of host publicationRecent Advances in Computers, Computing and Communications
PublisherWorld Scientific and Engineering Academy and Society
Pages321-325
Number of pages5
ISBN (Print)9608052629
Publication statusPublished - 2002

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Fuzzy rules
Fuzzy systems
Experiments

Keywords

  • Box-jenkins
  • Cluster validity
  • Clustering
  • Fuzzy modeling
  • Rule extraction
  • Sparse fuzzy system

ASJC Scopus subject areas

  • Engineering(all)

Cite this

Chong, A., Gedeon, T. D., & Kóczy, L. (2002). A projection based method for sparse fuzzy system generation. In Recent Advances in Computers, Computing and Communications (pp. 321-325). World Scientific and Engineering Academy and Society.

A projection based method for sparse fuzzy system generation. / Chong, A.; Gedeon, T. D.; Kóczy, L.

Recent Advances in Computers, Computing and Communications. World Scientific and Engineering Academy and Society, 2002. p. 321-325.

Research output: Chapter in Book/Report/Conference proceedingChapter

Chong, A, Gedeon, TD & Kóczy, L 2002, A projection based method for sparse fuzzy system generation. in Recent Advances in Computers, Computing and Communications. World Scientific and Engineering Academy and Society, pp. 321-325.
Chong A, Gedeon TD, Kóczy L. A projection based method for sparse fuzzy system generation. In Recent Advances in Computers, Computing and Communications. World Scientific and Engineering Academy and Society. 2002. p. 321-325
Chong, A. ; Gedeon, T. D. ; Kóczy, L. / A projection based method for sparse fuzzy system generation. Recent Advances in Computers, Computing and Communications. World Scientific and Engineering Academy and Society, 2002. pp. 321-325
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