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Certifiable Robustness to Graph Perturbations

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Stephan Günnemann

Prof. Dr.

Principal Investigator

Abstract

Despite the exploding interest in graph neural networks there has been little effort to verify and improve their robustness. This is even more alarming given recent findings showing that they are extremely vulnerable to adversarial attacks on both the graph structure and the node attributes. We propose the first method for verifying certifiable (non-)robustness to graph perturbations for a general class of models that includes graph neural networks and label/feature propagation. By exploiting connections to PageRank and Markov decision processes our certificates can be efficiently (and under many threat models exactly) computed. Furthermore, we investigate robust training procedures that increase the number of certifiably robust nodes while maintaining or improving the clean predictive accuracy.

inproceedings


NeurIPS 2019

33rd Conference on Neural Information Processing Systems. Vancouver, Canada, Dec 08-14, 2019.
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A* Conference

Authors

A. Bojchevski • S. Günnemann

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Research Area

 A3 | Computational Models

BibTeXKey: BG19a

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