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Unified Low-Rank Tensor Learning and Spectral Embedding for Multi-View Subspace Clustering

Lele Fu, Zhaoliang Chen, Yongyong Chen, Shiping Wang

2022IEEE Transactions on Multimedia60 citationsDOI

Abstract

Multi-view subspace clustering aims to utilize the comprehensive information of multi-source features to aggregate data into multiple subspaces. Recently, low-rank tensor learning has been applied to multi-view subspace clustering, which explores high-order correlations of multi-view data and has achieved remarkable results. However, these existing methods have certain limitations: 1) The learning processes of low-rank tensor and label indicator matrix are independent. 2) Variable contributions of different views to the consistent clustering results are not discriminated. To handle these issues, we propose a unified framework that integrates low-rank tensor learning and spectral embedding (ULTLSE) for multi-view subspace clustering. Specifically, the proposed model adopts the tensor singular value decomposition (t-SVD) based tensor nuclear norm to encode the low-rank property of the self-representation tensor, and a label indicator matrix via spectral embedding is simultaneously exploited. To distinguish the importance of various views, we learn a quantifiable weighting coefficient for each view. An effective recursion optimization algorithm is also developed to address the proposed model. Finally, we conduct comprehensive experiments on eight real-world datasets with three categories. The experimental results indicate that the proposed ULTLSE is advanced over existing state-of-the-art clustering methods.

Topics & Concepts

Cluster analysisTensor (intrinsic definition)Matrix normSpectral clusteringComputer scienceSingular value decompositionRank (graph theory)Artificial intelligenceSubspace topologyPattern recognition (psychology)EmbeddingMathematicsPhysicsPure mathematicsQuantum mechanicsCombinatoricsEigenvalues and eigenvectorsFace and Expression RecognitionSparse and Compressive Sensing TechniquesVideo Surveillance and Tracking Methods
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