Learning A Structured Optimal Bipartite Graph for Co-Clustering
Nie, Feiping, Wang, Xiaoqian, Deng, Cheng, Huang, Heng
–Neural Information Processing Systems
Co-clustering methods have been widely applied to document clustering and gene expression analysis. These methods make use of the duality between features and samples such that the co-occurring structure of sample and feature clusters can be extracted. In graph based co-clustering methods, a bipartite graph is constructed to depict the relation between features and samples. Most existing co-clustering methods conduct clustering on the graph achieved from the original data matrix, which doesn't have explicit cluster structure, thus they require a post-processing step to obtain the clustering results. In this paper, we propose a novel co-clustering method to learn a bipartite graph with exactly k connected components, where k is the number of clusters.
Neural Information Processing Systems
Feb-14-2020, 14:43:29 GMT
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