Litcius/Paper detail

Towards Scalable Multi-View Clustering via Joint Learning of Many Bipartite Graphs

Jinghuan Lao, Dong Huang, Chang‐Dong Wang, Jianhuang Lai

2023IEEE Transactions on Big Data28 citationsDOI

Abstract

This paper focuses on two limitations to previous multi-view clustering approaches. First, they frequently suffer from quadratic or cubic computational complexity, which restricts their feasibility for large-scale datasets. Second, they often rely on a single graph on each view, yet lack the ability to jointly explore many versatile graph structures for enhanced multi-view information exploration. In light of this, this paper presents a new Scalable Multi-view Clustering via Many Bipartite graphs (SMCMB) approach, which is capable of jointly learning and fusing many bipartite graphs from multiple views while maintaining high efficiency for very large-scale datasets. Different from the one-anchor-set-per-view paradigm, we first produce multiple diversified anchor sets on each view and thus obtain many anchor sets on multiple views, based on which the anchor-based subspace representation learning is enforced and many bipartite graphs are simultaneously learned. Then these bipartite graphs are efficiently partitioned to produce the base clusterings, which are further re-formulated into a unified bipartite graph for the final clustering. Note that SMCMB has almost linear time and space complexity. Extensive experiments on twenty general-scale and large-scale multi-view datasets confirm its superiority in scalability and robustness over the state-of-the-art.

Topics & Concepts

Bipartite graphComputer scienceScalabilityCluster analysisTheoretical computer scienceGraphArtificial intelligenceDatabaseAdvanced Clustering Algorithms ResearchText and Document Classification TechnologiesComplex Network Analysis Techniques