Community detection in complex networks using multi-objective bat algorithm

Iyad Abu Doush, N. A. We, Amjad Alrashdan, M. A. A. Betar, M. Awadallah
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引用次数: 5

Abstract

Community detection is the problem of identifying communities in which we aim to discover groups of nodes with high connectivity within the same group and with low connectivity outside the group. Community detection is considered to be a non-deterministic polynomial-time hard problem. Heuristic algorithms can be used to solve such a complex optimisation problem. Bat algorithm (BA) is a meta-heuristic optimisation algorithm. The BA can be used to model a multi-objective optimisation problem. In this paper, the multi-objective bat algorithm (MOBA) is adapted to model and solve the community detection problem. In order to evaluate the algorithm, four real-world datasets are used. The performance of the algorithm is compared with seven other methods from the literature. The comparison was in terms of two metrics to check the quality of the obtained community namely modularity (Q) and normalised mutual information (NMI). The results show that the proposed algorithm outperforms all algorithms in one dataset and that it is competitive in other cases.
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基于多目标bat算法的复杂网络社区检测
社区检测是识别社区的问题,我们的目标是发现同一组内具有高连通性和组外低连通性的节点组。社区检测被认为是一个非确定性的多项式时间难题。启发式算法可以用来解决这样一个复杂的优化问题。Bat算法是一种元启发式优化算法。BA可用于多目标优化问题的建模。本文采用多目标蝙蝠算法(MOBA)对社区检测问题进行建模和求解。为了评估该算法,使用了四个真实数据集。将该算法的性能与文献中其他七种方法进行了比较。比较是根据两个指标来检查所获得的社区的质量,即模块化(Q)和规范化互信息(NMI)。结果表明,该算法在一个数据集上优于所有算法,在其他情况下具有竞争力。
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