Publication | Open Access
Multi-View Clustering via Deep Matrix Factorization
500
Citations
34
References
2017
Year
Geometric LearningMachine VisionMachine LearningData ScienceImage AnalysisPattern RecognitionEngineeringMatrix FactorizationManifold LearningMulti-view DataMultilinear Subspace LearningUnsupervised Machine LearningComputer ScienceView DataDeep LearningMulti-view ClusteringComputer VisionDeep Matrix Factorization
Multi-View Clustering (MVC) has garnered more attention recently since many real-world data are comprised of different representations or views. The key is to explore complementary information to benefit the clustering problem. In this paper, we present a deep matrix factorization framework for MVC, where semi-nonnegative matrix factorization is adopted to learn the hierarchical semantics of multi-view data in a layer-wise fashion. To maximize the mutual information from each view, we enforce the non-negative representation of each view in the final layer to be the same. Furthermore, to respect the intrinsic geometric structure in each view data, graph regularizers are introduced to couple the output representation of deep structures. As a non-trivial contribution, we provide the solution based on alternating minimization strategy, followed by a theoretical proof of convergence. The superior experimental results on three face benchmarks show the effectiveness of the proposed deep matrix factorization model.
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