Labeling small-degree nodes promotes semi-supervised community detection on graph convolutional network

IF 1.6 4区 物理与天体物理 Q3 PHYSICS, CONDENSED MATTER
Yu Zhao, Huiyao Li, Bo Yang
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Abstract

Community structure is one of the most important characteristics of network, which can reveal the internal organization structure of nodes. Many algorithms have been proposed to identify community structures in networks. However, the classification accuracy of existing unsupervised community detection algorithms is generally low. Therefore, the semi-supervised community detection algorithm which can greatly improve the classification accuracy by introducing a small number of labeled nodes has attracted much attention. Nevertheless, previous studies were sketchy in terms of label rates and also ignored the variation of classification accuracy under different labeling strategies. In this paper, based on graph convolutional networks, we first study the effect of labeling strategies and label rates on classification accuracy in four real world networks in detail. The research phenomenon is counter-intuitive but surprisingly effective: the classification accuracy of labeling small-degree nodes or random-selection nodes is significantly higher than that of labeling high-degree nodes. The labeling strategies based on acquaintance immune algorithm also prove this result. The interesting question that arises is what topological properties of the network can lead to such results? So we test and verify it in two kinds of synthetic networks. It is found that the phenomenon which labeling small-degree nodes promotes classification accuracy can be observed when the degree distribution of the network follows power-law distribution and the ratio of the external edges of the community to the total edges of nodes in the network is small.

Abstract Image

标记小度节点促进图卷积网络的半监督社群检测
社群结构是网络最重要的特征之一,它可以揭示节点的内部组织结构。人们提出了很多算法来识别网络中的社群结构。然而,现有的无监督社群检测算法的分类准确率普遍较低。因此,通过引入少量标记节点就能大大提高分类准确率的半监督式群落检测算法备受关注。然而,以往的研究在标签率方面比较粗略,也忽略了不同标签策略下分类准确率的变化。本文基于图卷积网络,首先详细研究了四个真实世界网络中标签策略和标签率对分类准确率的影响。研究现象与直觉相反,但效果却出人意料:标注小度节点或随机选择节点的分类准确率明显高于标注高度节点的分类准确率。基于熟人免疫算法的标注策略也证明了这一结果。有趣的问题是,网络的哪些拓扑特性会导致这样的结果?因此,我们在两种合成网络中进行了测试和验证。结果发现,当网络的度分布呈幂律分布,且群落的外部边与网络中节点的总边之比很小时,就会出现标记小度节点能提高分类准确率的现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
The European Physical Journal B
The European Physical Journal B 物理-物理:凝聚态物理
CiteScore
2.80
自引率
6.20%
发文量
184
审稿时长
5.1 months
期刊介绍: Solid State and Materials; Mesoscopic and Nanoscale Systems; Computational Methods; Statistical and Nonlinear Physics
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