A novel three-phase expansion algorithm for uncovering communities in social networks using local influence and similarity in embedding space

Meriem Adraoui , Elyazid Akachar , Yahya Bougteb , Brahim Ouhbi , Bouchra Frikh , Asmaa Retbi , Samir Bennani
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Abstract

Community detection can help uncover and understand complex networks’ underlying patterns and structures. It involves identifying cohesive groups with similar entities while being separated from other groups. Social networks are a prime example of an area where community detection is particularly relevant, as it can provide insight into the behaviors of individuals. Several community detection methods have been proposed, each addressing the problem from different perspectives. However, the rise of vast and intricate networks from diverse domains has necessitated the development of community detection methods that can effectively handle large-scale graphs. This study introduces a novel three-phase expansion algorithm for community discovery based on nodes’ local information and similarity in embedding space. The proposed model consists of three steps. In the first stage, we generate an embedding space in which nodes are represented as vectors, and we extract nodes that greatly influence others and have an extraordinary ability to create communities using degree centrality measures. Then, based on cosine similarity in the embedding space, we group the most similar nodes to the influential ones in the same community and create an initial community structure. In the last phase, we extract the weak communities from the initial community structure generated in the second phase and merge them with the strong ones. We conduct extensive experiments on both real-world and synthetic networks to demonstrate the effectiveness of our proposal. The experimental results show that the proposed algorithm performs better than other widely used algorithms and is highly reliable and efficient in large-scale graphs.

利用嵌入空间中的局部影响力和相似性揭示社交网络中社群的新型三阶段扩展算法
社群检测有助于发现和了解复杂网络的基本模式和结构。这包括识别具有相似实体的内聚群体,同时将其与其他群体区分开来。社交网络就是社群检测特别相关的一个典型例子,因为社群检测可以让人们深入了解个人的行为。目前已经提出了几种社群检测方法,每种方法都从不同的角度来解决这个问题。然而,随着来自不同领域的庞大而复杂的网络的兴起,有必要开发能有效处理大规模图的社群检测方法。本研究介绍了一种基于节点本地信息和嵌入空间相似性的新型三阶段扩展算法,用于发现社区。所提出的模型包括三个步骤。在第一阶段,我们生成一个嵌入空间,在该空间中节点被表示为向量,我们利用度中心性度量提取出对其他节点有重大影响并具有创建社区的非凡能力的节点。然后,根据嵌入空间中的余弦相似度,我们将最相似的节点与有影响力的节点归入同一社区,并创建初始社区结构。在最后一个阶段,我们从第二阶段生成的初始社区结构中提取弱社区,并将其与强社区合并。我们在真实世界和合成网络上进行了大量实验,以证明我们建议的有效性。实验结果表明,建议的算法比其他广泛使用的算法性能更好,在大规模图中非常可靠和高效。
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CiteScore
3.90
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