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Constraint projections for semi‐supervised spectral clustering ensemble
Author(s) -
Yang Jingya,
Sun Linfu,
Wu Qishi
Publication year - 2019
Publication title -
concurrency and computation: practice and experience
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.309
H-Index - 67
eISSN - 1532-0634
pISSN - 1532-0626
DOI - 10.1002/cpe.5359
Subject(s) - cluster analysis , spectral clustering , correlation clustering , pattern recognition (psychology) , constrained clustering , constraint (computer aided design) , artificial intelligence , fuzzy clustering , single linkage clustering , computer science , k medians clustering , data mining , cure data clustering algorithm , clustering high dimensional data , ensemble learning , consensus clustering , data stream clustering , pairwise comparison , mathematics , geometry
Summary Cluster ensemble combines multiple base clustering results in a suitable way to improve the accuracy of the clustering result. In the conventional cluster ensemble frameworks, pairwise constraints and constraint projections have not been used together, and spectral clustering algorithm is rarely adopted to serve as the consensus function. In this paper, we design a constraint projections for semi‐supervised spectral clustering ensemble (CPSSSCE) model. It takes advantages of spectral clustering algorithm and executes semi‐supervised learning twice. Compared to traditional cluster ensemble approaches, CPSSSCE is characterized by several properties. First, the original data are transformed to lower‐dimensional representations by constraint projection before base clustering. Second, a similarity matrix is constructed using the base clustering results and modified using pairwise constraints. Third, the spectral clustering algorithm is applied to process the similarity matrix to obtain a consensus cluster result. Extensive experiments on standard University of California Irvine Machine Learning Repository (UCI) and Microsoft datasets demonstrated that the CPSSSCE is superior to other cluster ensemble algorithms including a semi‐supervised spectral clustering ensemble.