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arxiv: 1312.2237 · v1 · pith:PC6RJAJNnew · submitted 2013-12-08 · 💻 cs.SI · physics.soc-ph

Clustering online social network communities using genetic algorithms

classification 💻 cs.SI physics.soc-ph
keywords networkonlineapproachclusteringclusterscommunitiesdatagenetic
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To analyze the activities in an Online Social network (OSN), we introduce the concept of "Node of Attraction" (NoA) which represents the most active node in a network community. This NoA is identified as the origin/initiator of a post/communication which attracted other nodes and formed a cluster at any point in time. In this research, a genetic algorithm (GA) is used as a data mining method where the main objective is to determine clusters of network communities in a given OSN dataset. This approach is efficient in handling different type of discussion topics in our studied OSN - comments, emails, chat expressions, etc. and can form clusters according to one or more topics. We believe that this work can be useful in finding the source for spread of this GA-based clustering of online interactions and reports some results of experiments with real-world data and demonstrates the performance of proposed approach.

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