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首页> 外文期刊>ACM transactions on intelligent systems >Differential Flattening: A Novel Framework for Community Detection in Multi-Layer Graphs
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Differential Flattening: A Novel Framework for Community Detection in Multi-Layer Graphs

机译:差分展平:用于多层图中社区检测的新框架

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摘要

A multi-layer graph consists of multiple layers of weighted graphs, where the multiple layers represent the different aspects of relationships. Considering multiple aspects (i.e., layers) together is essential to achieve a comprehensive and consolidated view. In this article, we propose a novel framework of differential flattening, which facilitates the analysis of multi-layer graphs, and apply this framework to community detection. Differential flattening merges multiple graphs into a single graph such that the graph structure with the maximum clustering coefficient is obtained from the single graph. It has two distinct features compared with existing approaches. First, dealing with multiple layers is done independently of a specific community detection algorithm, whereas previous approaches rely on a specific algorithm. Thus, any algorithm for a single graph becomes applicable to multi-layer graphs. Second, the contribution of each layer to the single graph is determined automatically for the maximum clustering coefficient. Since differential flattening is formulated by an optimization problem, the optimal solution is easily obtained by well-known algorithms such as interior point methods. Extensive experiments were conducted using the Lancichinetti-Fortunato-Radicchi (LFR) benchmark networks as well as theDBLP, 20 Newsgroups, and MIT Reality Mining networks. The results show that our approach of differential flattening leads to discovery of higher-quality communities than baseline approaches and the state-of-the-art algorithms.
机译:多层图由多层加权图组成,其中多层代表关系的不同方面。在一起考虑多个方面(即,层)对于获得全面和统一的视图至关重要。在本文中,我们提出了一种新颖的差分扁平化框架,该框架有助于多层图的分析,并将该框架应用于社区检测。差分平坦化将多个图合并为单个图,以便从单个图获得具有最大聚类系数的图结构。与现有方法相比,它具有两个明显的特征。首先,处理多层与特定的社区检测算法无关,而先前的方法则依赖于特定的算法。因此,用于单个图的任何算法都可应用于多层图。其次,针对最大聚类系数自动确定每一层对单个图的贡献。由于微分平坦化是由一个优化问题制定的,因此可以通过诸如内点法之类的众所周知的算法轻松地获得最优解。使用Lancichinetti-Fortunato-Radicchi(LFR)基准网络以及DBLP,20个新闻组和MIT Reality Mining网络进行了广泛的实验。结果表明,与基线方法和最新算法相比,我们的差异平坦化方法导致发现了更高质量的社区。

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