A Theoretic Framework of K-Means-Based Consensus Clustering

Wu, Junjie (Beihang University) | Liu, Hongfu (Beihang University) | Xiong, Hui (Rutgers University) | Cao, Jie ( Nanjing University of Finance and Economics )

AAAI Conferences 

Consensus clustering emerges as a promising solution to find cluster structures from data. As an efficient approach for consensus clustering, the K-means based method has garnered attention in the literature, but the existing research is still preliminary and fragmented. In this paper, we provide a systematic study on the framework of K-means-based Consensus Clustering (KCC). We first formulate the general definition of KCC, and then reveal a necessary and sufficient condition for utility functions that work for KCC, on both complete and incomplete basic partitionings. Experimental results on various real-world data sets demonstrate that KCC is highly efficient and is comparable to the state-of-the-art methods in terms of clustering quality. In addition, KCC shows high robustness to incomplete basic partitionings with substantial missing values.

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