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publication name Kumar SS, Inbarani HH, Azar AT, Hassanien AE (2015) Rough set-based meta-heuristic clustering approach for social e-learning systems. IJIEI 3(1): 23-41.
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year 2015
keywords
journal
volume Not Available
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Local/International International
Paper Link http://dl.acm.org/citation.cfm?id=2767543
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Abstract

An imperative challenge of Web 2.0 is the way that an incredible measure of information has been incited over a brief time. Tags are generally used to dig and arrange the Web 2.0 resources. Clustering the tag information is exceptionally dreary since the tag space is significant in a few social tagging sites. Tag clustering is the method of collecting the comparative tags into groups. The tag clustering is truly helpful for searching and arranging the Web 2.0 resources furthermore vital for the achievement of social tagging systems. In this paper, the clustering techniques apply to the social e-learning tagging system http://www.pumrpelearning.com; furthermore, we proposed a hybrid tolerance rough set-based particle swarm optimisation TRS-PSO for clustering tags. At that stage, the proposed technique is contrasted with benchmark clustering algorithm k-means with particle swarm optimisation PSO-based grouping method. The exploratory investigation represents the character of the suggested methodology.

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