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InfGCN:Identifying influential nodes in complex networks with graph convolutional networks

机译:Infgcn:用图形卷积网络识别复杂网络中的有影响性节点

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摘要

Identifying influential nodes in a complex network is very critical as complex networks are ubiquitous. Traditional methods, such as centrality based methods and machine learning based methods, only consider either network structures or node features to evaluate the significance of nodes. However, the influential importance of nodes should be determined by both network structures and node features. To solve this problem, this paper proposes a deep learning model, named InfGCN, to identify the most influential nodes in a complex network based on Graph Convolutional Networks. InfGCN takes neighbor graphs and four classic structural features as the input into a graph convolutional network for learning nodes' representations, and then feeds the representations into the task-learning layers, comparing the ground truth derived from Susceptible Infected Recovered (SIR) simulation experiments with quantitative infection rate. Extensive experiments on five real-world networks of different types and sizes demonstrate that the proposed model significantly outperforms traditional methods, and can accurately identify influential nodes. (C) 2020 Elsevier B.V. All rights reserved.
机译:识别复杂网络中的有影响性节点非常关键,因为复杂的网络是普遍的。传统方法,如基于中心的方法和基于机器学习的方法,只考虑网络结构或节点功能来评估节点的意义。然而,节点的有影响力重要性应该通过网络结构和节点特征来确定。为了解决这个问题,本文提出了一个名为Infgcn的深度学习模型,以识别基于图形卷积网络的复杂网络中最有影响力的节点。 Infgcn将邻居图和四个经典结构特征作为输入到学习节点表示的图表卷积网络中的输入,然后将表示的表示源进入任务学习层,比较来自易受感染的受感染(SIR)模拟实验的地面真理定量感染率。在不同类型和尺寸的五个真实网络上进行广泛的实验表明,所提出的模型显着优于传统方法,可以准确地识别有影响的节点。 (c)2020 Elsevier B.v.保留所有权利。

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