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Inverse modelling-based multi-objective evolutionary algorithm with decomposition for community detection in complex networks

机译:复杂网络中社区检测分解的逆建模的多目标进化算法

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摘要

Community structure is an important topological property of complex networks representing real-world systems, and it is believed to be a highly important tool for understanding how complex networks are organized and function. Generally, community detection can be considered to be a single-objective or multi-objective optimization problem, and a great number of population-based optimization algorithms have been explored to address this problem in the past several decades. In this study, we present a novel discrete inverse modelling-based multi-objective evolutionary algorithm with decomposition (DIM-MOEA/D) for community detection in complex networks. First, the population is initialized by a problem-specific method based on label propagation. Next, inverse models based on the network topology are constructed to generate offspring by sampling the objective space, and the problem-specific mutation is introduced to maintain the diversity of the population and avoid being trapped in the local optima. Next, the decomposition-based selection is introduced as the updating rule of individuals. Finally, several real-world networks are considered to evaluate the performance of the proposed algorithm. The experimental results demonstrate that compared with the state-of-the-art approaches, DIM-MOE/VD is an effective and promising method for solving community detection in complex networks. (C) 2018 Elsevier B.V. All rights reserved.
机译:社区结构是代表现实世界系统的复杂网络的重要拓扑属性,据信是一个非常重要的工具,了解复杂网络是如何组织和功能的。通常,社区检测可以被认为是单一目标或多客观的优化问题,并且已经探索了大量的人口优化算法来解决过去几十年中的这个问题。在这项研究中,我们提出了一种具有分解(DIM-MOEA / D)的新型离散逆建模的多目标进化算法,用于复杂网络中的社区检测。首先,通过基于标签传播的问题特定方法初始化群体。接下来,构建基于网络拓扑的反向模型以通过对客观空间进行采样来生成后代,并引入特定于问题的突变以维持人口的分集,并避免被困在本地最佳中。接下来,将基于分解的选择作为更新规则引入了个体的更新规则。最后,考虑了几个真实网络评估了所提出的算法的性能。实验结果表明,与最先进的方法相比,Dim-Moe / VD是解决复杂网络中的群落检测的有效和有希望的方法。 (c)2018年elestvier b.v.保留所有权利。

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