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Large-Scale Multi-View Clustering via Fast Essential Subspace Representation Learning

Qinghai Zheng

2022IEEE Signal Processing Letters22 citationsDOI

Abstract

Large-scale Multi-View Clustering (LMVC) is a hot research problem in the fields of signal processing and machine learning, and many anchor-based multi-view subspace clustering algorithms are proposed in recent years. However, most existing methods usually concentrate on the issue of reducing the time cost and ignore the exploration of the complementary information during the clustering process. To this end, we propose a Fast Essential Subspace Representation Learning (FESRL) method for large-scale multi-view subspace clustering. Specifically, FESRL introduces the orthogonal transformation to investigate both the complementary and consensus information across multiple views. The essential subspace representation can be learned in a linear time cost. Experiments conducted on several benchmark datasets illustrate the competitiveness of the proposed method.

Topics & Concepts

Cluster analysisComputer scienceSubspace topologyRepresentation (politics)Benchmark (surveying)Artificial intelligenceFeature learningMachine learningScale (ratio)Process (computing)Transformation (genetics)Data miningPattern recognition (psychology)LawPolitical sciencePoliticsPhysicsGeographyGeneChemistryBiochemistryGeodesyOperating systemQuantum mechanicsFace and Expression RecognitionVideo Surveillance and Tracking MethodsEvaluation Methods in Various Fields
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