JOURNAL ARTICLE

Simultaneous Representation Learning and Clustering for Incomplete Multi-view Data

Abstract

Incomplete multi-view clustering has attracted various attentions from diverse fields. Most existing methods factorize data to learn a unified representation linearly. Their performance may degrade when the relations between the unified representation and data of different views are nonlinear. Moreover, they need post-processing on the unified representations to extract the clustering indicators, which separates the consensus learning and subsequent clustering. To address these issues, in this paper, we propose a Simultaneous Representation Learning and Clustering (SRLC) method. Concretely, SRLC constructs similarity matrices to measure the relations between pair of instances, and learns low-dimensional representations of present instances on each view and a common probability label matrix simultaneously. Thus, the nonlinear information can be reflected by these representations and the clustering results can obtained from label matrix directly. An efficient iterative algorithm with guaranteed convergence is presented for optimization. Experiments on several datasets demonstrate the advantages of the proposed approach.

Keywords:
Cluster analysis Computer science Representation (politics) Similarity (geometry) Convergence (economics) Artificial intelligence Feature learning Correlation clustering Machine learning Constrained clustering Data mining Theoretical computer science Canopy clustering algorithm

Metrics

53
Cited By
3.63
FWCI (Field Weighted Citation Impact)
23
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0.94
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