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首页> 外文期刊>Advances in complex systems >Ant colony optimization with a new random walk model for community detection in complex networks
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Ant colony optimization with a new random walk model for community detection in complex networks

机译:利用新的随机游走模型进行蚁群优化,以检测复杂网络中的社区

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Detecting communities from complex networks has recently triggered great interest. Aiming at this problem, a new ant colony optimization strategy building on the Markov random walks theory, which is named as MACO, is proposed in this paper. The framework of ant colony optimization is taken as the basic framework in this algorithm. In each iteration, a Markov random walk model is employed as heuristic rule; all of the ants' local solutions are aggregated to a global one through an idea of clustering ensemble, which then will be used to update a pheromone matrix. The strategy relies on the progressive strengthening of within-community links and the weakening of between-community links. Gradually this converges to a solution where the underlying community structure of the complex network will become clearly visible. The proposed MACO has been evaluated both on synthetic benchmarks and on some real-world networks, and compared with some present competing algorithms. Experimental result has shown that MACO is highly effective for discovering communities.
机译:从复杂的网络中发现社区已经引起了极大的兴趣。针对这一问题,提出了一种基于马尔可夫随机游走理论的蚁群优化策略,即MACO。该算法以蚁群优化框架为基本框架。在每次迭代中,均采用马尔可夫随机游走模型作为启发式规则;通过聚类集成的思想,所有蚂蚁的本地解决方案被汇总为一个全局解决方案,然后将其用于更新信息素矩阵。该战略依靠逐步加强社区内部联系和削弱社区之间联系。逐渐地,这融合为一个解决方案,在该解决方案中,复杂网络的底层社区结构将变得清晰可见。拟议的MACO已在综合基准和某些实际网络上进行了评估,并与一些现有的竞争算法进行了比较。实验结果表明,MACO对于发现社区非常有效。

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