2021
DOI: 10.48550/arxiv.2111.04314
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Graph Robustness Benchmark: Benchmarking the Adversarial Robustness of Graph Machine Learning

Abstract: Adversarial attacks on graphs have posed a major threat to the robustness of graph machine learning (GML) models. Naturally, there is an ever-escalating arms race between attackers and defenders. However, the strategies behind both sides are often not fairly compared under the same and realistic conditions. To bridge this gap, we present the Graph Robustness Benchmark (GRB) with the goal of providing a scalable, unified, modular, and reproducible evaluation for the adversarial robustness of GML models. GRB sta… Show more

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