Semi-Supervised Learning With Graph Learning-Convolutional Networks

Bo Jiang, Ziyan Zhang, Doudou Lin, Jin Tang, B. Luo
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引用次数: 197

Abstract

Graph Convolutional Neural Networks (graph CNNs) have been widely used for graph data representation and semi-supervised learning tasks. However, existing graph CNNs generally use a fixed graph which may not be optimal for semi-supervised learning tasks. In this paper, we propose a novel Graph Learning-Convolutional Network (GLCN) for graph data representation and semi-supervised learning. The aim of GLCN is to learn an optimal graph structure that best serves graph CNNs for semi-supervised learning by integrating both graph learning and graph convolution in a unified network architecture. The main advantage is that in GLCN both given labels and the estimated labels are incorporated and thus can provide useful ‘weakly’ supervised information to refine (or learn) the graph construction and also to facilitate the graph convolution operation for unknown label estimation. Experimental results on seven benchmarks demonstrate that GLCN significantly outperforms the state-of-the-art traditional fixed structure based graph CNNs.
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半监督学习与图学习-卷积网络
图卷积神经网络(Graph Convolutional Neural Networks,图cnn)被广泛用于图数据表示和半监督学习任务。然而,现有的图cnn通常使用固定的图,这对于半监督学习任务来说可能不是最优的。在本文中,我们提出了一种新颖的图学习卷积网络(GLCN)用于图数据表示和半监督学习。GLCN的目标是通过在统一的网络架构中集成图学习和图卷积,学习最优的图结构,最优地服务于图cnn进行半监督学习。GLCN的主要优点是,给定的标签和估计的标签都被合并,因此可以提供有用的“弱”监督信息来改进(或学习)图的构造,并促进未知标签估计的图卷积操作。七个基准的实验结果表明,GLCN显著优于最先进的传统基于固定结构的图cnn。
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