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Community detection in attributed networks based on heterogeneous vertex interactions

机译:基于异构顶点交互的归属网络中的社区检测

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摘要

Community detection is attracting more attention on social network analysis. It is to cluster densely connected nodes into communities. In attributed networks where nodes have attributes, community detection should take both topology and attributes into account. Traditional community detection algorithms only focus on the topological structure. They do not take advantage of attributes so their performance is limited. Besides, most community detection algorithms for attributed networks are far from satisfactory because of accuracy and algorithm complexity. Moreover, most of the algorithms depend on users to specify the community number, which also impacts the performance. Based on a high-performance community detection algorithm named Attractor, we propose Hetero-Attractor which can detect communities in attributed networks. It expands the sociological model of Attractor and generates a heterogeneous network from the attributed network. Hetero-Attractor analyzes the new network based on the interactions between vertices. By these interactions, the topological information and attribute information not only play a role in the community detection but also interact with each other to reach a balanced result. It also develops a novel way to analyze the heterogeneous network. The experiments demonstrate that our algorithm performs better by utilizing the attribute information, and outperforms other methods both in terms of accuracy as well as scalability, with a maximum promotion of 60% in accuracy.
机译:社区检测在社交网络分析上吸引了更多的关注。它是将密集连接的节点群集成群。在节点具有属性的属性网络中,社区检测应考虑拓扑和属性。传统的社区检测算法仅关注拓扑结构。他们没有利用属性,因此他们的表现有限。此外,由于准确性和算法复杂性,大多数社区检测算法远非令人满意的令人满意的。此外,大多数算法依赖于用户指定社区号,这也影响性能。基于名为Largeter的高性能社区检测算法,我们提出了可以检测归属网络中的社区的异质吸引子。它扩展了吸引子的社会学模型,并从归属网络生成异构网络。异色吸引子根据顶点之间的相互作用分析新网络。通过这些互动,拓扑信息和属性信息不仅在社区检测中发挥作用,而且彼此相互作用以达到平衡结果。它还开发了一种分析异构网络的新方法。该实验表明,我们的算法通过利用属性信息来更好地执行更好,并且在准确性以及可扩展性方面都能优于其他方法,最大促销精度为60%。

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