Detecting Community Structures Within Complex Networks Using a Discrete Unconscious Search Algorithm
Detecting the communities that exist within complex social networks has a wide range of application in business, engineering, and sociopolitical settings. As a result, many community detection methods are being developed by researchers in the academic community. If the communities within social netw...
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Veröffentlicht in: | International journal of operations research and information systems 2021-04, Vol.12 (2), p.15-32 |
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description | Detecting the communities that exist within complex social networks has a wide range of application in business, engineering, and sociopolitical settings. As a result, many community detection methods are being developed by researchers in the academic community. If the communities within social networks can be more accurately detected, the behavior or characteristics of each community within the networks can be better understood, which implies that better decisions can be made. In this paper, a discrete version of an unconscious search algorithm was applied to three widely explored complex networks. After these networks were formulated as optimization problems, the unconscious search algorithm was applied, and the results were compared against the results found from a comprehensive review of state-of-the-art community detection methods. The comparative study shows that the unconscious search algorithm consistently produced the highest modularity that was discovered through the comprehensive review of the literature. |
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subjects | Algorithms Clustering Comparative studies Decision-making Information systems Literature reviews Modularity Optimization Researchers Search algorithms Social networks State-of-the-art reviews Teaching methods |
title | Detecting Community Structures Within Complex Networks Using a Discrete Unconscious Search Algorithm |
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