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Large-scale Multi-view Subspace Clustering in Linear Time

About

A plethora of multi-view subspace clustering (MVSC) methods have been proposed over the past few years. Researchers manage to boost clustering accuracy from different points of view. However, many state-of-the-art MVSC algorithms, typically have a quadratic or even cubic complexity, are inefficient and inherently difficult to apply at large scales. In the era of big data, the computational issue becomes critical. To fill this gap, we propose a large-scale MVSC (LMVSC) algorithm with linear order complexity. Inspired by the idea of anchor graph, we first learn a smaller graph for each view. Then, a novel approach is designed to integrate those graphs so that we can implement spectral clustering on a smaller graph. Interestingly, it turns out that our model also applies to single-view scenario. Extensive experiments on various large-scale benchmark data sets validate the effectiveness and efficiency of our approach with respect to state-of-the-art clustering methods.

Zhao Kang, Wangtao Zhou, Zhitong Zhao, Junming Shao, Meng Han, Zenglin Xu• 2019

Related benchmarks

TaskDatasetResultRank
Multi-view ClusteringSynthetic3d
ACC95.67
26
ClusteringProkaryotic
Accuracy57.53
10
Multi-view ClusteringHdigit
ACC97.09
10
Multi-view ClusteringCIFAR100
ACC84.82
10
Multi-view ClusteringCIFAR10
ACC98.96
10
Multi-view ClusteringYouTubeFace
ACC14.79
10
ClusteringMNIST-USPS
Accuracy (ACC)56.26
10
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