Associate Professor
Supervisor of Master's Candidates
Title of Paper:Multi-view clustering on unmapped data via constrained non-negative matrix factorization
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Date of Publication:2018-12-01
Journal:NEURAL NETWORKS
Included Journals:PubMed、SCIE、Scopus
Volume:108
Page Number:155-171
ISSN No.:0893-6080
Key Words:Non-negative matrix factorization; Constrained clustering; Multi-view clustering; Unmapped data; Constraint selection
Abstract:Existing multi-view clustering algorithms require that the data is completely or partially mapped between each pair of views. However, this requirement could not be satisfied in many practical settings. In this paper, we tackle the problem of multi-view clustering on unmapped data in the framework of NMF based clustering. With the help of inter-view constraints, we define the disagreement between each pair of views by the fact that the indicator vectors of two samples from two different views should be similar if they belong to the same cluster and dissimilar otherwise. The overall objective of our algorithm is to minimize the loss function of NMF in each view as well as the disagreement between each pair of views. Furthermore, we provide an active inter-view constraints selection strategy which tries to query the relationships between samples that are the most influential and samples that are the farthest from the existing constraint set. Experimental results show that, with a small number of (either randomly selected or actively selected) constraints, the proposed algorithm performs well on unmapped data, and outperforms the baseline algorithms on partially mapped data and completely mapped data. (C) 2018 Elsevier Ltd. All rights reserved.
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