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Certified Robustness of Graph Classification against Topology Attack with Randomized Smoothing

Global Communications Conference (GLOBECOM), 2020
12 September 2020
Zhidong Gao
Rui Hu
Yanmin Gong
    AAMLOOD
ArXiv (abs)PDFHTML
Abstract

Graph classification has practical applications in diverse fields. Recent studies show that graph-based machine learning models are especially vulnerable to adversarial perturbations due to the non i.i.d nature of graph data. By adding or deleting a small number of edges in the graph, adversaries could greatly change the graph label predicted by a graph classification model. In this work, we propose to build a smoothed graph classification model with certified robustness guarantee. We have proven that the resulting graph classification model would output the same prediction for a graph under l0l_0l0​ bounded adversarial perturbation. We also evaluate the effectiveness of our approach under graph convolutional network (GCN) based multi-class graph classification model.

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