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Graph Adversarial Training: Dynamically Regularizing Based on Graph Structure

机译:图对逆势训练:基于图形结构动态规范

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摘要

Recent efforts show that neural networks are vulnerable to small but intentional perturbations on input features in visual classification tasks. Due to the additional consideration of connections between examples (e.g., articles with citation link tend to be in the same class), graph neural networks could be more sensitive to the perturbations, since the perturbations from connected examples exacerbate the impact on a target example. Adversarial Training (AT), a dynamic regularization technique, can resist the worst-case perturbations on input features and is a promising choice to improve model robustness and generalization. However, existing AT methods focus on standard classification, being less effective when training models on graph since it does not model the impact from connected examples. In this work, we explore adversarial training on graph, aiming to improve the robustness and generalization of models learned on graph. We propose Graph Adversarial Training (GraphAT), which takes the impact from connected examples into account when learning to construct and resist perturbations. We give a general formulation of GraphAT, which can be seen as a dynamic regularization scheme based on the graph structure. To demonstrate the utility of GraphAT, we employ it on a state-of-the-art graph neural network model - Graph Convolutional Network (GCN). We conduct experiments on two citation graphs (Citeseer and Cora) and a knowledge graph (NELL), verifying the effectiveness of GraphAT which outperforms normal training on GCN by 4.51 percent in node classification accuracy. Codes are available via: https://github.com/fulifeng/GraphAT.
机译:最近的努力表明,神经网络容易受到视觉分类任务中输入特征的小但故意扰动。由于实施例之间的连接的额外考虑(例如,具有引文链路的文章倾向于在同一类中),图形神经网络可能对扰动更敏感,因为来自连接示例的扰动加剧了对目标示例的影响。对抗性训练(AT),一种动态正则化技术,可以抵抗输入特征的最坏情况扰动,并且是提高模型稳健性和泛化的有希望的选择。但是,现有方法专注于标准分类,当图表上的培训模型时效果较低,因为它不会从连接示例模拟影响。在这项工作中,我们探索了对图表的对抗训练,旨在提高图形上学学模型的鲁棒性和泛化。我们提出了图形对抗培训(Graphar),当学习构建和抵抗扰动时,这将从连接的例子中取得了影响。我们给出了Graphar的一般制定,它可以基于图形结构被视为动态正则化方案。为了展示GraphAt的效用,我们将其雇用在最先进的图形神经网络模型 - 图表卷积网络(GCN)上。我们两个引用图(Citeseer和科拉)和知识图(NELL)进行实验,验证GraphAT的这点分类的准确性4.51%的优于上GCN正常训练的有效性。代码可通过:https://github.com/fulifeng/graphat。

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