作者
Junjie Wu, Hongfu Liu, Hui Xiong, Jie Cao, Jian Chen
发表日期
2014/4/10
期刊
IEEE transactions on knowledge and data engineering
卷号
27
期号
1
页码范围
155-169
出版商
IEEE
简介
The objective of consensus clustering is to find a single partitioning which agrees as much as possible with existing basic partitionings. Consensus clustering emerges as a promising solution to find cluster structures from heterogeneous data. As an efficient approach for consensus clustering, the K-means based method has garnered attention in the literature, however the existing research efforts are still preliminary and fragmented. To that end, in this paper, we provide a systematic study of K-means-based consensus clustering (KCC). Specifically, we first reveal a necessary and sufficient condition for utility functions which work for KCC. This helps to establish a unified framework for KCC on both complete and incomplete data sets. Also, we investigate some important factors, such as the quality and diversity of basic partitionings, which may affect the performances of KCC. Experimental results on various realworld …
引用总数
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学术搜索中的文章
J Wu, H Liu, H Xiong, J Cao, J Chen - IEEE transactions on knowledge and data engineering, 2014