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An ant-based algorithm with local optimization for community detection in large-scale networks

机译:大规模网络中基于蚁群优化的局部检测算法

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摘要

In this paper, we propose a multi-layer ant-based algorithm (MABA), which detects communities from networks by means of locally optimizing modularity using individual ants. The basic version of MABA, namely SABA, combines a self-avoiding label propagation technique with a simulated annealing strategy for ant diffusion in networks. Once the communities are found by SABA, this method can be reapplied to a higher level network where each obtained community is regarded as a new vertex. The aforementioned process is repeated iteratively, and this corresponds to MABA. Thanks to the intrinsic multi-level nature of our algorithm, it possesses the potential ability to unfold multi-scale hierarchical structures. Furthermore, MABA has the ability that mitigates the resolution limit of modularity. The proposed MABA has been evaluated on both computer-generated benchmarks and widely used real-world networks, and has been compared with a set of competitive algorithms. Experimental results demonstrate that MABA is both effective and efficient (in near linear time with respect to the size of network) for discovering communities.
机译:在本文中,我们提出了一种基于多层蚂蚁的算法(MABA),该算法通过使用单个蚂蚁对模块进行局部优化来检测网络中的社区。 MABA的基本版本(即SABA)将自动标签传播技术与模拟退火策略结合起来,以实现网络中蚂蚁的扩散。一旦通过SABA找到了社区,就可以将该方法重新应用于更高级别的网络,在该网络中,每个获得的社区都被视为一个新的顶点。迭代地重复上述过程,这对应于MABA。由于我们算法的固有多级性质,它具有展开多级层次结构的潜在能力。此外,MABA具有减轻模块化分辨率极限的能力。拟议的MABA已在计算机生成的基准和广泛使用的实际网络上进行了评估,并已与一组竞争算法进行了比较。实验结果表明,MABA对于发现社区既有效又有效(相对于网络规模而言,时间接近线性)。

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