Litcius/Paper detail

Fast Multi-view Discrete Clustering with Anchor Graphs

Qianyao Qiang, Bin Zhang, Fei Wang, Feiping Nie

2021Proceedings of the AAAI Conference on Artificial Intelligence67 citationsDOIOpen Access PDF

Abstract

Generally, the existing graph-based multi-view clustering models consists of two steps: (1) graph construction; (2) eigen-decomposition on the graph Laplacian matrix to compute a continuous cluster assignment matrix, followed by a post-processing algorithm to get the discrete one. However, both the graph construction and eigen-decomposition are time-consuming, and the two-stage process may deviate from directly solving the primal problem. To this end, we propose Fast Multi-view Discrete Clustering (FMDC) with anchor graphs, focusing on directly solving the spectral clustering problem with a small time cost. We efficiently generate representative anchors and construct anchor graphs on different views. The discrete cluster assignment matrix is directly obtained by performing clustering on the automatically aggregated graph. FMDC has a linear computational complexity with respect to the data scale, which is a significant improvement compared to the quadratic one. Extensive experiments on benchmark datasets demonstrate its efficiency and effectiveness.

Topics & Concepts

Cluster analysisSpectral clusteringLaplacian matrixComputer scienceModular decompositionClustering coefficientGraphTheoretical computer scienceMatrix (chemical analysis)Quadratic equationAlgorithmMathematicsMathematical optimizationArtificial intelligencePathwidthLine graphComposite materialGeometryMaterials scienceFace and Expression RecognitionAdvanced Clustering Algorithms ResearchAdvanced Computing and Algorithms