Towards Fine-Grained Explainability for Heterogeneous Graph Neural Network

Authors

  • Tong Li Shanghai Jiao Tong University
  • Jiale Deng Shanghai Jiao Tong University
  • Yanyan Shen Shanghai Jiao Tong University
  • Luyu Qiu Huawei Research Hong Kong
  • Huang Yongxiang Huawei Research Hong Kong
  • Caleb Chen Cao Huawei Research Hong Kong

DOI:

https://doi.org/10.1609/aaai.v37i7.26040

Keywords:

ML: Transparent, Interpretable, Explainable ML, ML: Graph-based Machine Learning

Abstract

Heterogeneous graph neural networks (HGNs) are prominent approaches to node classification tasks on heterogeneous graphs. Despite the superior performance, insights about the predictions made from HGNs are obscure to humans. Existing explainability techniques are mainly proposed for GNNs on homogeneous graphs. They focus on highlighting salient graph objects to the predictions whereas the problem of how these objects affect the predictions remains unsolved. Given heterogeneous graphs with complex structures and rich semantics, it is imperative that salient objects can be accompanied with their influence paths to the predictions, unveiling the reasoning process of HGNs. In this paper, we develop xPath, a new framework that provides fine-grained explanations for black-box HGNs specifying a cause node with its influence path to the target node. In xPath, we differentiate the influence of a node on the prediction w.r.t. every individual influence path, and measure the influence by perturbing graph structure via a novel graph rewiring algorithm. Furthermore, we introduce a greedy search algorithm to find the most influential fine-grained explanations efficiently. Empirical results on various HGNs and heterogeneous graphs show that xPath yields faithful explanations efficiently, outperforming the adaptations of advanced GNN explanation approaches.

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Published

2023-06-26

How to Cite

Li, T., Deng, J., Shen, Y., Qiu, L., Yongxiang, H., & Cao, C. C. (2023). Towards Fine-Grained Explainability for Heterogeneous Graph Neural Network. Proceedings of the AAAI Conference on Artificial Intelligence, 37(7), 8640-8647. https://doi.org/10.1609/aaai.v37i7.26040

Issue

Section

AAAI Technical Track on Machine Learning II