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A seed-expanding method based on random walks for community detection in networks with ambiguous community structures

机译:社区结构不明确的网络中基于随机游动的种子扩展方法

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摘要

Community detection has received a great deal of attention, since it could help to reveal the useful information hidden in complex networks. Although most previous modularity-based and local modularity-based community detection algorithms could detect strong communities, they may fail to exactly detect several weak communities. In this work, we define a network with clear or ambiguous community structures based on the types of its communities. A seed-expanding method based on random walks is proposed to detect communities for networks, especially for the networks with ambiguous community structures. We identify local maximum degree nodes, and detect seed communities in a network. Then, the probability of a node belonging to each community is calculated based on the total probability model and random walks, and each community is expanded by repeatedly adding the node which is most likely to belong to it. Finally, we use the community optimization method to ensure that each node is in a community. Experimental results on both computer-generated and real-world networks demonstrate that the quality of the communities detected by the proposed algorithm is superior to the- state-of-the-art algorithms in the networks with ambiguous community structures.
机译:社区检测已引起广泛关注,因为它可以帮助揭示隐藏在复杂网络中的有用信息。尽管大多数以前的基于模块化和基于本地模块化的社区检测算法都可以检测到强社区,但它们可能无法准确检测到几个弱社区。在这项工作中,我们根据社区的类型定义一个具有清晰或模糊社区结构的网络。提出了一种基于随机游动的种子扩展方法,以检测网络的社区,尤其是对于具有模糊社区结构的网络。我们确定本地最大程度的节点,并检测网络中的种子社区。然后,基于总概率模型和随机游动来计算属于每个社区的节点的概率,并且通过重复添加最可能属于该节点的节点来扩展每个社区。最后,我们使用社区优化方法来确保每个节点都在社区中。在计算机生成的网络和真实世界的网络上的实验结果表明,在具有模糊社区结构的网络中,所提算法检测到的社区质量优于最新算法。

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