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Evaluating Community Detection Using a Bi-objective Optimization

机译:使用双目标优化评估社区检测

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Community detection consists on a partitioning networks technique into clusters (communities) with weak coupling (external connectivity) and high cohesion (internal connectivity). In order to measure the performance of the clustering, the network modularity is largely used, a metric that presents the cohesion and the coupling of communities. In this paper, a global and bi-objective function is proposed to evaluate community detection. This function combines modularity (based on structure and edges weights) and the inter-classes inertia (based on nodes weights). Then, we rely on a computational optimization technique i.e. Particle Swarm Optimization to maximize this bi-objective quality. Finally, a case study evaluates the proposed solution and illustrates practical uses.
机译:社区检测包括分区网络技术进入群集群(社区),耦合弱(外部连接)和高凝聚力(内部连接)。为了测量聚类的性能,在很大程度上使用了网络模块化,这是一个呈现凝聚力和社区耦合的度量。本文提出了全局和双目标函数来评估群落检测。该功能组合模块化(基于结构和边缘权重)和类间惯性(基于节点权重)。然后,我们依赖于计算优化技术,即粒子群优化,以最大化这种双目标质量。最后,案例研究评估所提出的解决方案并说明实际用途。

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