基于改进蚁群算法的社交网络最大团块求解

Suqi Zhang, Yongfeng Dong, Jun Yin, Jingjin Guo
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引用次数: 0

摘要

最大集团是社交网络中最紧密的内聚子群体。在社交网络中寻找最大的集团已经成为社交网络分析的一个重要方面,如隐私保护、被引共被引分析、内聚子群分析等。随着大数据的发展,图中节点的数量和分析的复杂性对最大团问题的求解提出了更高的要求。因此,我们提出了一种改进的蚁群算法。改进了蚁群的节点选择策略,扩大了蚁群的搜索空间,增加了蚁群解的多样性,避免了局部最优解的产生。为了提高算法的精度和收敛速度,还采用了团的局部改进。该算法已在DIMACS基准数据集和几个典型的社交网络上进行了测试。实验结果表明了该算法的有效性和可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Ant Colony Algorithm for Finding the Maximum Clique in Social Network
The Maximum Clique is the most compact cohesive subgroup in Social Network. Finding the maximum clique in the Social Network has become an important aspect of social network analysis, such as privacy protection, citation and co-citation analysis, cohesive subgroup analysis et al. With the development of big data, the mass of nodes in the graph and complexity of analysis set a higher requirement for solving the maximum clique problem (MCP). Therefore, we propose an improved ant colony algorithm. Particularly, the strategy of the ant to select the nodes is improved so that the search space can be expanded and the variety of the solution is increased, with this approach local optimal solution can be avoided. Local improvement of the clique is also adopted to improve the accuracy and convergence speed of the proposed algorithm. The proposed algorithm has been tested on the DIMACS benchmark dataset and several typical social networks. Experimental results show the effectiveness and feasibility of the proposed algorithm.
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