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Low-complexity fuzzy relational clustering algorithms for Web mining
385
Citations
47
References
2001
Year
Robust Fuzzy C-medoidsWeb MiningFuzzy LogicEngineeringInformation RetrievalData ScienceData MiningC Representative ObjectsDocument ClusteringKnowledge DiscoveryComputational ComplexityData IntegrationComputer ScienceKnowledge Discovery ProcessFuzzy ClusteringNew Algorithms-fuzzy C-medoidsText MiningOptimization-based Data Mining
This paper presents new algorithms-fuzzy c-medoids (FCMdd) and robust fuzzy c-medoids (RFCMdd)-for fuzzy clustering of relational data. The objective functions are based on selecting c representative objects (medoids) from the data set in such a way that the total fuzzy dissimilarity within each cluster is minimized. A comparison of FCMdd with the well-known relational fuzzy c-means algorithm (RFCM) shows that FCMdd is more efficient. We present several applications of these algorithms to Web mining, including Web document clustering, snippet clustering, and Web access log analysis.
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