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Faithful Explanations for Deep Graph Models (2205.11850v1)

Published 24 May 2022 in cs.LG and cs.AI

Abstract: This paper studies faithful explanations for Graph Neural Networks (GNNs). First, we provide a new and general method for formally characterizing the faithfulness of explanations for GNNs. It applies to existing explanation methods, including feature attributions and subgraph explanations. Second, our analytical and empirical results demonstrate that feature attribution methods cannot capture the nonlinear effect of edge features, while existing subgraph explanation methods are not faithful. Third, we introduce \emph{k-hop Explanation with a Convolutional Core} (KEC), a new explanation method that provably maximizes faithfulness to the original GNN by leveraging information about the graph structure in its adjacency matrix and its \emph{k-th} power. Lastly, our empirical results over both synthetic and real-world datasets for classification and anomaly detection tasks with GNNs demonstrate the effectiveness of our approach.

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Authors (8)
  1. Zifan Wang (75 papers)
  2. Yuhang Yao (32 papers)
  3. Chaoran Zhang (9 papers)
  4. Han Zhang (338 papers)
  5. Youjie Kang (1 paper)
  6. Carlee Joe-Wong (69 papers)
  7. Matt Fredrikson (44 papers)
  8. Anupam Datta (51 papers)
Citations (2)