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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Weighted modularity optimization for crisp and fuzzy community detection in large-scale networks
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Weighted modularity optimization for crisp and fuzzy community detection in large-scale networks

机译:大规模网络中模糊和模糊社区检测的加权模块化优化

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Community detection is a classic and very difficult task in the field of complex network analysis, principally for its applications in domains such as social or biological networks analysis. One of the most widely used technologies for community detection in networks is the maximization of the quality function known as modularity. However, existing work has proved that modularity maximization algorithms for community detection may fail to resolve communities in small size. Here we present a new community detection method, which is able to find crisp and fuzzy communities in undirected and unweighted networks by maximizing weighted modularity. The algorithm derives new edge weights using the cosine similarity in order to go around the resolution limit problem. Then a new local moving heuristic based on weighted modularity optimization is proposed to cluster the updated network. Finally, the set of potentially attractive clusters for each node is computed, to further uncover the crisply fuzzy partition of the network. We give demonstrative applications of the algorithm to a set of synthetic benchmark networks and six real-world networks and find that it outperforms the current state of the art proposals (even those aimed at finding overlapping communities) in terms of quality and scalability. (C) 2016 Elsevier B.V. All rights reserved.
机译:社区检测是复杂网络分析领域中一项经典且非常困难的任务,主要是因为其在社会或生物网络分析等领域中的应用。网络中用于社区检测的最广泛使用的技术之一是最大化称为模块化的质量功能。但是,现有工作证明,用于社区检测的模块化最大化算法可能无法解析小规模的社区。在这里,我们提出了一种新的社区检测方法,该方法能够通过最大化加权模块,在无向和无权网络中找到清晰和模糊的社区。该算法使用余弦相似度推导新的边缘权重,以解决分辨率极限问题。然后提出了一种新的基于加权模块化优化的局部移动启发式算法,对更新后的网络进行聚类。最后,计算每个节点可能吸引的群集的集合,以进一步揭示网络的清晰模糊分区。我们将该算法在一组综合基准网络和六个实际网络中进行了演示应用,发现在质量和可伸缩性方面,该算法优于当前的最新建议(甚至是那些旨在寻找重叠社区的建议)。 (C)2016 Elsevier B.V.保留所有权利。

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