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* Aristides Gionis, [[Heikki Mannila]], Panayiotis Tsaparas. [https://web.archive.org/web/20060828084525/http://www.cs.helsinki.fi/u/tsaparas/publications/aggregated-journal.pdf Clustering Aggregation]. 21st International Conference on Data Engineering (ICDE 2005)
* Hongjun Wang, Hanhuai Shan, Arindam Banerjee. [http://www.siam.org/proceedings/datamining/2009/SDM09_022_wangh.pdf Bayesian Cluster Ensembles]{{Dead link|date=November 2019 |bot=InternetArchiveBot |fix-attempted=yes }}, SIAM International Conference on Data Mining, SDM 09
*{{cite conference | last=Nguyen | first=Nam | last2=Caruana | first2=Rich | title=Consensus Clusterings | publisher=IEEE | year=2007 | doi=10.1109/icdm.2007.73 | page=|quote=...we address the problem of combining multiple clusterings without access to the underlying features of the data. This process is known in the literature as clustering ensembles, clustering aggregation, or consensus clustering. Consensus clustering yields a stable and robust final clustering that is in agreement with multiple clusterings. We find that an iterative EM-like method is remarkably effective for this problem. We present an iterative algorithm and its variations for finding clustering consensus. An extensive empirical study compares our proposed algorithms with eleven other consensus clustering methods on four data sets using three different clustering performance metrics. The experimental results show that the new ensemble clustering methods produce clusterings that are as good as, and often better than, these other methods.}}
[[Category:Cluster analysis]]
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