Correntropy based semi-supervised concept factorization with adaptive neighbors for clustering

Siyuan Peng, Zhijing Yang, Feiping Nie, Badong Chen, Zhiping Lin

Research output: Contribution to journalArticlepeer-review

12 Scopus citations

Abstract

Concept factorization (CF) has shown the effectiveness in the field of data clustering. In this paper, a novel and robust semi-supervised CF method, called correntropy based semi-supervised concept factorization with adaptive neighbors (CSCF), is proposed with improved performance in clustering applications. Specifically, on the one hand, the CSCF method adopts correntropy as the cost function to increase the robustness for non-Gaussian noise and outliers, and combines two different types of supervised information simultaneously for obtaining a compact low-dimensional representation of the original data. On the other hand, CSCF assigns the adaptive neighbors for each data point to construct a good data similarity matrix for reducing the sensitiveness of data. Moreover, a generalized version of CSCF is derived for enlarging the clustering application ranges. Analysis is also presented for the relationship of CSCF with several typical CF methods. Experimental results have shown that CSCF has better clustering performance than several state-of-the-art CF methods.

Original languageEnglish
Pages (from-to)203-217
Number of pages15
JournalNeural Networks
Volume154
DOIs
StatePublished - Oct 2022

Keywords

  • Adaptive neighbors
  • Clustering
  • Concept factorization
  • Correntropy
  • Semi-supervised learning

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