Improving fuzzy c-means clustering based on feature-weight learning

  • Xizhao Wang*
  • , Yadong Wang
  • , Lijuan Wang
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Feature-weight assignment can be regarded as a generalization of feature selection. That is, if all values of feature-weights are either 1 or 0, feature-weight assignment degenerates to the special case of feature selection. Generally speaking, a number in [0, 1] can be assigned to a feature for indicating the importance of the feature. This paper shows that an appropriate assignment of feature-weight can improve the performance of fuzzy c-means clustering. The weight assignment is given by learning according to the gradient descent technique. Experiments on some UCI databases demonstrate the improvement of performance of fuzzy c-means clustering.

Original languageEnglish
Pages (from-to)1123-1132
Number of pages10
JournalPattern Recognition Letters
Volume25
Issue number10
DOIs
StatePublished - 16 Jul 2004

Keywords

  • Fuzziness
  • Fuzzy c-means
  • Gradient descent technique
  • Similarity measure
  • Weighted fuzzy c-means

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