论文标题

加权网络的混合会员估计

Mixed Membership Estimation for Weighted Networks

论文作者

Qing, Huan

论文摘要

在过去十年中,节点可以属于多个社区的社区发现是重叠的非加权网络,其中节点可以属于多个社区。但是,在重叠的加权网络中,边缘权重可以成为任何真实价值的社区检测仍然是一个挑战。在本文中,为了建模与潜在社区成员资格重叠的加权网络,我们提出了一个称为“学位校正的混合成员分配模型”的生成模型,可以将其视为概括几种先前的模型。首先,我们通过应用光谱算法的应用来解决对拟议模型的社区成员资格估计,并建立一致性的理论保证。然后,我们提出重叠的加权模块化,以测量具有正边缘权重的加权网络重叠的社区检测质量。为了确定加权网络的社区数量,我们将算法合并到重叠的加权模块中。我们证明了由学位校正的混合成员分配模型和与模拟数据和11个现实世界网络的应用程序重叠的加权模块的优势。

Community detection in overlapping un-weighted networks in which nodes can belong to multiple communities is one of the most popular topics in modern network science during the last decade. However, community detection in overlapping weighted networks in which edge weights can be any real values remains a challenge. In this article, to model overlapping weighted networks with latent community memberships, we propose a generative model called the degree-corrected mixed membership distribution-free model which can be viewed as generalizing several previous models. First, we address the community membership estimation of the proposed model by an application of a spectral algorithm and establish a theoretical guarantee of consistency. We then propose overlapping weighted modularity to measure the quality of overlapping community detection for weighted networks with positive and negative edge weights. To determine the number of communities for weighted networks, we incorporate the algorithm into the overlapping weighted modularity. We demonstrate the advantages of degree-corrected mixed membership distribution-free model and overlapping weighted modularity with applications to simulated data and eleven real-world networks.

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