论文标题

通过随机图的水印图神经网络

Watermarking Graph Neural Networks by Random Graphs

论文作者

Zhao, Xiangyu, Wu, Hanzhou, Zhang, Xinpeng

论文摘要

许多学习任务要求我们处理包含元素之间丰富关系信息的图形数据,导致增加图形神经网络(GNN)模型将部署在工业产品中,以提高服务质量。但是,它们还提出了建模身份验证的挑战。有必要保护GNN模型的所有权,这促使我们在本文中向GNN模型提供了水印方法。在提出的方法中,将带有随机节点特征向量和标签的Erdos-Renyi(ER)随机图随机生成,作为触发器,以训练与正常样品一起保护的GNN。在模型训练期间,秘密水印被嵌入到ER图节点的标签预测中。在模型验证期间,通过使用扳机图激活标记的GNN,可以从输出中重建水印以验证所有权。由于ER图是随机生成的,因此将其馈送到非标记的GNN中,因此图节点的标签预测是随机的,导致较低的错误警报率(提出的工作)。实验结果还表明,明显的GNN在其原始任务上的性能不会受到损害。此外,它对模型压缩和微调非常可靠,这表明了优越性和适用性。

Many learning tasks require us to deal with graph data which contains rich relational information among elements, leading increasing graph neural network (GNN) models to be deployed in industrial products for improving the quality of service. However, they also raise challenges to model authentication. It is necessary to protect the ownership of the GNN models, which motivates us to present a watermarking method to GNN models in this paper. In the proposed method, an Erdos-Renyi (ER) random graph with random node feature vectors and labels is randomly generated as a trigger to train the GNN to be protected together with the normal samples. During model training, the secret watermark is embedded into the label predictions of the ER graph nodes. During model verification, by activating a marked GNN with the trigger ER graph, the watermark can be reconstructed from the output to verify the ownership. Since the ER graph was randomly generated, by feeding it to a non-marked GNN, the label predictions of the graph nodes are random, resulting in a low false alarm rate (of the proposed work). Experimental results have also shown that, the performance of a marked GNN on its original task will not be impaired. Moreover, it is robust against model compression and fine-tuning, which has shown the superiority and applicability.

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