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Genetic Algorithm with Local Search for Community Mining in Complex Networks

机译:复杂网络中基于局部搜索的遗传算法用于社区挖掘

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Detecting communities from complex networks has triggered considerable attention in several application domains. Targeting this problem, a local search based genetic algorithm (GALS) which employs a graph-based representation (LAR) has been proposed in this work. The core of the GALS is a local search based mutation technique. Aiming to overcome the drawbacks of the existing mutation methods, a concept called marginal gene has been proposed, and then an effective and efficient mutation method, combined with a local search strategy which is based on the concept of marginal gene, has also been proposed by analyzing the modularity function. Moreover, in this paper the percolation theory on ER random graphs is employed to further clarify the effectiveness of LAR presentation; A Markov random walk based method is adopted to produce an accurate and diverse initial population; the solution space of GALS will be significantly reduced by using a graph based mechanism. The proposed GALS has been tested on both computer-generated and real-world networks, and compared with some competitive community mining algorithms. Experimental result has shown that GALS is highly effective and efficient for discovering community structure.
机译:从复杂的网络中检测社区已在多个应用程序领域引起了相当大的关注。针对这个问题,在这项工作中已经提出了采用基于图的表示(LAR)的基于局部搜索的遗传算法(GALS)。 GALS的核心是基于本地搜索的突变技术。为了克服现有突变方法的弊端,提出了一种称为边缘基因的概念,然后提出了一种有效且高效的突变方法,并结合了基于边缘基因概念的局部搜索策略。分析模块化功能。此外,本文采用ER随机图上的渗流理论进一步阐明了LAR表示的有效性。采用基于马尔可夫随机游动的方法来产生准确多样的初始种群;通过使用基于图的机制,可以大大减少GALS的解决方案空间。拟议的GALS已在​​计算机生成的网络和真实世界的网络上进行了测试,并与一些竞争性社区挖掘算法进行了比较。实验结果表明,GALS对于发现社区结构非常有效。

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