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SLPA-based parallel overlapping community detection approach in large complex social networks

机译:基于SLPA的平行重叠群落检测方法在大型复杂社交网络中

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摘要

Performance improvement of community detection is anNPproblem in large social networks analysis where by integrating the overlapped communities' information and modularity maximization increases the time complexity and memory usage. This paper presents an online parallel overlapping community detection approach based on a speaker-listener propagation algorithm by proposing a novel parallel algorithm and applying three new metrics. This approach is presented to improve modularity and expand scalability for getting a significantly speedup in low time-consuming and usage memory through an agent-based parallel implementation in a multi-core architecture. The key ideas of our approach are increasing the communities' conductance score, limiting the speaking-listening stages and executing a strategic updating order to develop a speaker-listeners label propagation algorithm for getting better speedup and semi-deterministic results without using prior training or requiring particular predefined features. Experimental results of used large datasets compared with state-of-the-art algorithms show that the proposed method is extremely convergence and achieves an average 820% speedup in the label propagation algorithm, and significantly improves the modularity that are effective in finding better overlapping communities in a linear time complexityO(m) and lower usage memoryO(n).
机译:社区检测的性能提高是在大型社交网络分析中的AnnPProblem,其中通过集成重叠的社区信息和模块化最大化增加了时间复杂度和内存使用情况。本文通过提出新颖的并行算法并应用三个新度量,提出了一种基于扬声器 - 侦听器传播算法的在线并行重叠群落检测方法。提出这种方法以通过在多核架构中的基于代理的并行实现中,提高模块化,并扩展可扩展性,以便通过基于代理的并行实现在低耗时和使用存储器中获得显着加速。我们的方法的关键思想正在增加社区的电导评分,限制说话阶段,并执行战略更新顺序以开发扬声器 - 侦听器标签传播算法,以获得更好的加速和半确定性结果而不使用先前的训练或要求特定预定义的功能。与最先进的算法相比,使用大型数据集的实验结果表明,所提出的方法是极其收敛性,并在标签传播算法中实现了平均820%的加速,并显着提高了在找到更好的重叠社区方面有效的模块化在线性时间复杂性(M)和较低的使用Memoryo(n)。

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