Generating Robust Counterfactual Witnesses for Graph Neural Networks

April 30, 2024 ยท Declared Dead ยท ๐Ÿ› IEEE International Conference on Data Engineering

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Authors Dazhuo Qiu, Mengying Wang, Arijit Khan, Yinghui Wu arXiv ID 2404.19519 Category cs.LG: Machine Learning Cross-listed cs.DB Citations 6 Venue IEEE International Conference on Data Engineering Last Checked 3 months ago
Abstract
This paper introduces a new class of explanation structures, called robust counterfactual witnesses (RCWs), to provide robust, both counterfactual and factual explanations for graph neural networks. Given a graph neural network M, a robust counterfactual witness refers to the fraction of a graph G that are counterfactual and factual explanation of the results of M over G, but also remains so for any "disturbed" G by flipping up to k of its node pairs. We establish the hardness results, from tractable results to co-NP-hardness, for verifying and generating robust counterfactual witnesses. We study such structures for GNN-based node classification, and present efficient algorithms to verify and generate RCWs. We also provide a parallel algorithm to verify and generate RCWs for large graphs with scalability guarantees. We experimentally verify our explanation generation process for benchmark datasets, and showcase their applications.
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