LSCPM: communities in massive real-world Link Streams by Clique Percolation Method

Time Pub Date : 2023-08-21 DOI:10.48550/arXiv.2308.10801
Alexis Baudin, Lionel Tabourier, Clémence Magnien
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Abstract

Community detection is a popular approach to understand the organization of interactions in static networks. For that purpose, the Clique Percolation Method (CPM), which involves the percolation of k-cliques, is a well-studied technique that offers several advantages. Besides, studying interactions that occur over time is useful in various contexts, which can be modeled by the link stream formalism. The Dynamic Clique Percolation Method (DCPM) has been proposed for extending CPM to temporal networks. However, existing implementations are unable to handle massive datasets. We present a novel algorithm that adapts CPM to link streams, which has the advantage that it allows us to speed up the computation time with respect to the existing DCPM method. We evaluate it experimentally on real datasets and show that it scales to massive link streams. For example, it allows to obtain a complete set of communities in under twenty-five minutes for a dataset with thirty million links, what the state of the art fails to achieve even after a week of computation. We further show that our method provides communities similar to DCPM, but slightly more aggregated. We exhibit the relevance of the obtained communities in real world cases, and show that they provide information on the importance of vertices in the link streams.
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LSCPM:通过Clique Perculation方法的大规模现实世界链接流中的社区
社区检测是理解静态网络中交互组织的一种流行方法。为此,涉及k-团渗透的团渗透法(CPM)是一种经过充分研究的技术,具有几个优点。此外,研究随着时间的推移而发生的交互作用在各种上下文中都是有用的,这可以通过链接流形式化来建模。为了将动态团渗透方法扩展到时间网络,提出了动态团渗透方法(DCPM)。然而,现有的实现无法处理大量数据集。我们提出了一种将CPM应用于链接流的新算法,其优点是相对于现有的DCPM方法,它可以使我们加快计算时间。我们在实际数据集上对其进行了实验评估,并表明它可以扩展到大规模的链接流。例如,它允许在25分钟内为一个拥有3000万个链接的数据集获得一套完整的社区,这是目前的技术水平即使经过一周的计算也无法实现的。我们进一步展示了我们的方法提供了类似于DCPM的社区,但是聚合程度稍微高一些。我们展示了在现实世界案例中获得的社区的相关性,并表明它们提供了关于链接流中顶点重要性的信息。
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