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Watermarking Graph Neural Networks by Random Graphs

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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.

Xiangyu Zhao, Hanzhou Wu, Xinpeng Zhang• 2020

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy72.8
742
Graph ClassificationENZYMES
Accuracy42.22
305
Node ClassificationPhoto--
165
Node ClassificationComputers--
143
Node ClassificationCora
F1 Score82.87
48
Node ClassificationCiteseer
F1 Score68.55
39
Node ClassificationPhoto
AUC99.57
38
Node ClassificationComputers
AUC98.92
38
Node ClassificationPhysics
Overall F191.43
34
Node ClassificationCS
Overall F189.93
34
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