Publication | Open Access
Fuzzy Co-Clustering Induced by Multinomial Mixture Models
50
Citations
25
References
2015
Year
EngineeringGaussian Mixture ModelsCorpus LinguisticsDual Fuzzy PartitionText MiningInformation RetrievalData ScienceData MiningPattern RecognitionDocument ClassificationFuzzy Co-clustering ModelStatisticsFuzzy Pattern RecognitionDocument ClusteringFuzzy LogicFuzzy Co-clustering InducedKnowledge DiscoveryComputer ScienceFuzzy Clustering
A close connection between fuzzy c -means (FCM) and Gaussian mixture models (GMMs) have been discussed and several extended FCM algorithms were induced by the GMMs concept, where fuzzy partitions are proved to be more useful for revealing intrinsic cluster structures than probabilistic ones. Co-clustering is a promising technique for summarizing cooccurrence information such as document-keyword frequencies. In this paper, a fuzzy co-clustering model is induced based on the multinomial mixture models (MMMs) concept, in which the degree of fuzziness of both object and item fuzzy memberships can be properly tuned. The advantages of the dual fuzzy partition are demonstrated through several experimental results including document clustering applications.
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