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A Parallel Approach to Detect Communities in Evolving Networks

机译:检测不断发展网络社区的并行方法

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To understand the dynamics, functional and topological aspect of the real-world networks it is necessary to segregate the network into sub-networks, where each member of a sub-network possess analogous characteristics. Numerous number of community finding approaches are proposed in the last few decades to overcome the issues associated with community detection. Although, most of the conventional approaches rely on the premises that networks are static in nature and there won't be any alternation over time. Moreover, all these approaches are single machine approach and hence exhibits poor scalability. In this work, we propose a new incremental parallel community detection method, PcDEN (Parallel Community Detection approach in Evolving Networks). Our proposed method can detect communities in dynamic distributed networks. We define a new Affinity score based on intra-community strength between nodes and their neighbors. We also derive a new model to perform community merging, based on common high degree nodes present in both the communities. We tested our algorithm on various real-world networks for our experimentation. Results show that, PcDEN produce satisfactory output with respect to various assessment indices.
机译:为了了解实际网络的动态,功能和拓扑方面,必须将网络分离为子网,其中子网的每个成员具有类似的特征。在过去的几十年中提出了许多社区发现方法,以克服与社区检测相关的问题。虽然,大多数传统方法依赖于网络本质上静态的场所,并且随着时间的推移不会有任何交替。此外,所有这些方法都是单机方法,因此表现出可扩展性差。在这项工作中,我们提出了一种新的增量平行社区检测方法,PCDDEN(在不断发展的网络中并行社区检测方法)。我们所提出的方法可以检测动态分布式网络中的社区。我们根据节点与其邻居之间的社区内部实力来定义新的亲和力得分。我们还基于在整个社区中存在的共同高度节点来派生新模型来执行社区合并。我们在各种现实网络上测试了我们的实验。结果表明,PCDDED对各种评估指标产生了令人满意的产量。

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