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A novel dynamic community detection algorithm based on modularity optimization

机译:一种基于模块化优化的新型动态社区检测算法

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Dynamic community detection has been an attractive topic due to its ability to reveal the evolutionary trends over time. However, existing dynamic community detection algorithms suffer from several disadvantages. Some make strong assumptions about the generation of communities, or require priori knowledge. In this paper, we propose a novel algorithm, dynamic Louvain method, to detect communities in temporal networks based on modularity optimization. The basic motivation is that the communities across different time steps should smoothly evolve. When partitioning temporal networks at a given time step, we should take historical network structure into consideration. Besides, this algorithm makes no assumption about the generation of communities, and is able to decide the number of communities automatically. This novel algorithm is applied to the temporal financial networks, and numerical evaluations show that this novel algorithm could obtain better partitions, compared with other state-of-art algorithms.
机译:动态社区检测由于具有随时间推移揭示进化趋势的能力而成为一个有吸引力的话题。但是,现有的动态社区检测算法具有几个缺点。有些人对社区的产生有很强的假设,或者需要先验知识。在本文中,我们提出了一种新的算法,动态鲁汶方法,基于模块性优化来检测时间网络中的社区。其基本动机是跨不同时间步骤的社区应平稳发展。在给定的时间步划分时间网络时,我们应考虑历史网络结构。此外,该算法无需假设社区的产生,并且能够自动确定社区的数量。将该新算法应用于时间金融网络,数值评估表明,与其他最新算法相比,该新算法可以获得更好的分区。

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