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Robust Counterfactual Explanations on Graph Neural...
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Robust Counterfactual Explanations on Graph Neural Networks

Abstract

Massive deployment of Graph Neural Networks (GNNs) in high-stake applications generates a strong demand for explanations that are robust to noise and align well with human intuition. Most existing methods generate explanations by identifying a subgraph of an input graph that has a strong correlation with the prediction. These explanations are not robust to noise because independently optimizing the correlation for a single input can easily overfit noise. Moreover, they are not counterfactual because removing an identified subgraph from an input graph does not necessarily change the prediction result. In this paper, we propose a novel method to generate robust counterfactual explanations on GNNs by explicitly modelling the common decision logic of GNNs on similar input graphs. Our explanations are naturally robust to noise because they are produced from the common decision boundaries of a GNN that govern the predictions of many similar input graphs. The explanations are also counterfactual because removing the set of edges identified by an explanation from the input graph changes the prediction significantly. Exhaustive experiments on many public datasets demonstrate the superior performance of our method.

Authors

Bajaj M; Chu L; Xue ZY; Pei J; Wang L; Lam PCH; Zhang Y

Volume

7

Pagination

pp. 5644-5655

Publication Date

January 1, 2021

Conference proceedings

Advances in Neural Information Processing Systems

ISSN

1049-5258

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Fields of Research (FoR)

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