Large-Scale Graphs Community Detection using Spark GraphFrames

Elena-Simona Apostol, Adrian-Cosmin Cojocaru, Ciprian-Octavian Truică
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Abstract

With the emergence of social networks, online platforms dedicated to different use cases, and sensor networks, the emergence of large-scale graph community detection has become a steady field of research with real-world applications. Community detection algorithms have numerous practical applications, particularly due to their scalability with data size. Nonetheless, a notable drawback of community detection algorithms is their computational intensity~\cite{Apostol2014}, resulting in decreasing performance as data size increases. For this purpose, new frameworks that employ distributed systems such as Apache Hadoop and Apache Spark which can seamlessly handle large-scale graphs must be developed. In this paper, we propose a novel framework for community detection algorithms, i.e., K-Cliques, Louvain, and Fast Greedy, developed using Apache Spark GraphFrames. We test their performance and scalability on two real-world datasets. The experimental results prove the feasibility of developing graph mining algorithms using Apache Spark GraphFrames.
使用 Spark GraphFrames 进行大规模图形群落检测
随着社交网络、专用于不同用例的在线平台以及传感器网络的出现,大规模图社区检测已成为一个具有实际应用价值的稳定研究领域。然而,社群检测算法的一个显著缺点是计算强度大~\cite{Apostol2014},导致性能随着数据量的增加而下降。为此,必须开发新的框架,采用分布式系统(如 Apache Hadoop 和 Apache Spark)来无缝处理大规模图。在本文中,我们为使用 Apache Spark GraphFrames 开发的社区检测算法(即 K-Cliques、Louvain 和 Fast Greedy)提出了一个新框架。我们在两个实际数据集上测试了它们的性能和可扩展性。实验结果证明了使用 Apache Spark GraphFrames 开发图挖掘算法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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