基于谐波基序模块化的多层网络社区检测方法

Ling Huang, Changdong Wang, Hongyang Chao
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引用次数: 35

摘要

近年来,多层网络社区检测受到越来越多的关注,从不同的角度开发了许多方法。尽管取得了成功,但它们主要依赖于单个节点和边的低阶连接结构。而高阶连接结构作为多路网络的基本组成部分,具有比边缘更好的社区特征。利用高阶结构进行多层网络社区检测的主要挑战是最具代表性的高阶结构可能在每一层之间变化。本文提出了一种用于多层网络社区检测的高阶结构方法,称为谐波基序模块化(HM-Modularity)。其核心思想是设计一种新颖的高阶结构,即谐波基序,它能够将多层高阶结构信息整合在一起,构成一个初级结构层。提取各层的高阶结构信息,作为发现多层群落结构的辅助信息。在主层和每个辅助层之间建立了耦合。最后,设计了一个和谐的母题模块来生成社区结构。通过求解谐波基序模块化的优化问题,可以得到底层的群体标签,从而揭示原始多层网络的群体结构。实验结果表明了该方法的有效性。
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A Harmonic Motif Modularity Approach for Multi-layer Network Community Detection
During the past several years, multi-layer network community detection has drawn an increasing amount of attention and many approaches have been developed from different perspectives. Despite the success, they mainly rely on the lower-order connectivity structure at the level of individual nodes and edges. However, the higher-order connectivity structure plays the essential role as the building block for multiplex networks, which may contain better signature of community than edge. The main challenge in utilizing higher-order structure for multi-layer network community detection is that the most representative higher-order structure may vary from one layer to another. In this paper, we propose a higher-order structural approach for multi-layer network community detection, termed harmonic motif modularity (HM-Modularity). The key idea is to design a novel higher-order structure, termed harmonic motif, which is able to integrate higher-order structural information from multiple layers to construct a primary layer. The higher-order structural information of each individual layer is also extracted, which is taken as the auxiliary information for discovering the multi-layer community structure. A coupling is established between the primary layer and each auxiliary layer. Finally, a harmonic motif modularity is designed to generate the community structure. By solving the optimization problem of the harmonic motif modularity, the community labels of the primary layer can be obtained to reveal the community structure of the original multi-layer network. Experiments have been conducted to show the effectiveness of the proposed method.
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