4.7 Article

Ensemble clustering based on weighted co-association matrices: Error bound and convergence properties

Journal

PATTERN RECOGNITION
Volume 63, Issue -, Pages 427-436

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.patcog.2016.10.017

Keywords

Weighted clustering ensemble; Co-association matrix; Latent variable model; Cluster validity index; Ensemble size; Error bound; Hyperspectral image segmentation

Funding

  1. Russian Foundation for Basic Research [14-07-00249a]
  2. MES (Russia)
  3. RSF grant [14-14-00453]
  4. Russian Science Foundation [14-14-00453] Funding Source: Russian Science Foundation

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We consider an approach to ensemble clustering based on weighted co-association matrices, where the weights are determined with some evaluation functions. Using a latent variable model of clustering ensemble, it is proved that, under certain assumptions, the clustering quality is improved with an increase in the ensemble size and the expectation of evaluation function. Analytical dependencies between the ensemble size and quality estimates are derived. Theoretical results are supported with numerical examples using Monte-Carlo modeling and segmentation of a real hyperspectral image under presence of noise channels.

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