A Genetic Algorithm for Identifying Overlapping Communities in Social Networks Using an Optimized Search Space

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DOI: 10.4236/sn.2013.24019    4,984 Downloads   9,002 Views  Citations

ABSTRACT

There are currently many approaches to identify the community structure of a network, but relatively few specific to detect overlapping community structures. Likewise, there are few networks with ground truth overlapping nodes. For this reason,we introduce a new network, Pilgrim, with known overlapping nodes, and a new genetic algorithm for detecting such nodes. Pilgrim is comprised of a variety of structures including two communities with dense overlap,which is common in real social structures. This study initially explores the potential of the community detection algorithm LabelRank for consistent overlap detection; however, the deterministic nature of this algorithm restricts it to very few candidate solutions. Therefore, we propose a genetic algorithm using a restricted edge-based clustering technique to detect overlapping communities by maximizing an efficient overlapping modularity function. The proposed restriction to the edge-based representation precludes the possibility of disjoint communities, thereby, dramatically reducing the search space and decreasing the number of generations required to produce an optimal solution. A tunable parameterr allows the strictness of the definition of overlap to be adjusted allowing for refinement in the number of identified overlapping nodes. Our method, tested on several real social networks, yields results comparable to the most effective overlapping community detection algorithms to date.

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Dickinson, B. , Valyou, B. and Hu, W. (2013) A Genetic Algorithm for Identifying Overlapping Communities in Social Networks Using an Optimized Search Space. Social Networking, 2, 193-201. doi: 10.4236/sn.2013.24019.

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