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文件名称: Graph Adversarial Training:Dynamically Regularizing Based on Graph Structure.pdf
  所属分类: 深度学习
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  文件大小: 1mb
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  上传时间: 2019-08-09
  提 供 者: qq_31******
 详细说明: Abstract—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 t o 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.
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