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A Stochastic Model for Detecting Overlapping and Hierarchical Community Structure

机译:重叠和分层社区结构检测的随机模型

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摘要

Community detection is a fundamental problem in the analysis of complex networks. Recently, many researchers have concentrated on the detection of overlapping communities, where a vertex may belong to more than one community. However, most current methods require the number (or the size) of the communities as a priori information, which is usually unavailable in real-world networks. Thus, a practical algorithm should not only find the overlapping community structure, but also automatically determine the number of communities. Furthermore, it is preferable if this method is able to reveal the hierarchical structure of networks as well. In this work, we firstly propose a generative model that employs a nonnegative matrix factorization (NMF) formulization with a l2,1 norm regularization term, balanced by a resolution parameter. The NMF has the nature that provides overlapping community structure by assigning soft membership variables to each vertex; the l2,1 regularization term is a technique of group sparsity which can automatically determine the number of communities by penalizing too many nonempty communities; and hence the resolution parameter enables us to explore the hierarchical structure of networks. Thereafter, we derive the multiplicative update rule to learn the model parameters, and offer the proof of its correctness. Finally, we test our approach on a variety of synthetic and real-world networks, and compare it with some state-of-the-art algorithms. The results validate the superior performance of our new method.
机译:社区检测是复杂网络分析中的一个基本问题。最近,许多研究人员专注于检测重叠的社区,在这些社区中,一个顶点可能属于多个社区。但是,大多数当前方法都要求将社区的数量(或规模)作为先验信息,而这在现实世界的网络中通常是不可用的。因此,实用的算法不仅应找到重叠的社区结构,而且还应自动确定社区的数量。此外,优选的是,该方法也能够揭示网络的分层结构。在这项工作中,我们首先提出一个生成模型,该模型采用非负矩阵分解(NMF)公式化,该公式具有l2,1范数正则化项,并由分辨率参数进行平衡。 NMF具有通过为每个顶点分配软成员资格变量来提供重叠社区结构的性质。 l2,1正则化项是一种稀疏性技术,可以通过惩罚过多的非空社区来自动确定社区的数量;因此,分辨率参数使我们能够探索网络的层次结构。此后,我们导出乘法更新规则以学习模型参数,并提供其正确性的证明。最后,我们在各种综合和现实网络中测试我们的方法,并将其与一些最新算法进行比较。结果证明了我们新方法的优越性能。

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