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Clustering Ensemble via Structured Hypergraph Learning - 2022

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Clustering Ensemble via Structured Hypergraph Learning | S-Logix

Research Area:  Machine Learning

Abstract:

Clustering ensemble integrates multiple base clustering results to obtain a consensus result and thus improves the stability and robustness of the single clustering method. Since it is natural to use a hypergraph to represent the multiple base clustering results, where instances are represented by nodes and base clusters are represented by hyperedges, some hypergraph based clustering ensemble methods are proposed. Conventional hypergraph based methods obtain the final consensus result by partitioning a pre-defined static hypergraph. However, since base clusters may be imperfect due to the unreliability of base clustering methods, the pre-defined hypergraph constructed from the base clusters is also unreliable. Therefore, directly obtaining the final clustering result by partitioning the unreliable hypergraph is inappropriate. To tackle this problem, in this paper, we propose a clustering ensemble method via structured hypergraph learning, i.e., instead of being constructed directly, the hypergraph is dynamically learned from base results, which will be more reliable. Moreover, when dynamically learning the hypergraph, we enforce it to have a clear clustering structure, which will be more appropriate for clustering tasks, and thus we do not need to perform any uncertain postprocessing, such as hypergraph partitioning. Extensive experiments show that, our method not only performs better than the conventional hypergraph based ensemble methods, but also outperforms the state-of-the-art clustering ensemble methods.

Keywords:  
Clustering Results
Clustering method
Hyperedges
Ensemble methods
Clustering structure

Author(s) Name:  Peng Zhou, Xia Wang, Liang Du

Journal name:  Information Fusion

Conferrence name:  

Publisher name:  Elsevier

DOI:  10.1016/j.inffus.2021.09.003

Volume Information:  Volume 78