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Performance Evaluation of Modularity Based Community Detection Algorithms in Large Scale Networks

机译:大规模网络中模块化社区检测算法的性能评估

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摘要

Community structure detection is one of the major research areas of network science and it is particularly useful for large real networks applications. This work presents a deep study of the most discussed algorithms for community detection based on modularity measure: Newman’s spectral method using a fine-tuning stage and the method of Clauset, Newman, and Moore (CNM) with its variants. The computational complexity of the algorithms is analysed for the development of a high performance code to accelerate the execution of these algorithms without compromising the quality of the results, according to the modularity measure. The implemented code allows the generation of partitions with modularity values consistent with the literature and it overcomes 1 million nodes with Newman’s spectral method. The code was applied to a wide range of real networks and the performances of the algorithms are evaluated.
机译:社区结构检测是网络科学的主要研究领域之一,对大型真实网络应用特别有用。这项工作深入研究了基于模块化测量的社区检测最多讨论的算法:Newman的使用微调阶段和Clauset,Newman和Moore(CNM)的方法,具有其变体。分析了算法的计算复杂性,用于开发高性能代码,以加速这些算法的执行而不影响结果的质量,根据模块化测量。实现的代码允许使用与文献一致的模块化值生成分区,并且它克服了纽曼的频谱方法的100万节点。代码应用于广泛的真实网络,并且评估算法的性能。

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