Yong-Min ShinSunwoo KimEun-Bi YoonWon-Yong Shin
Aside the high performance of graph neural networks (GNNs), considerable attention has recently been paid to explanations of black-box deep learning models. Unlike most studies focusing on model explanations based on a specific graph instance, we propose Prototype-bAsed GNN-Explainer (PAGE), a novel model-level explanation method for graph-level classification that explains what the underlying model has learned by providing human-interpretable prototypes. Specifically, our method performs clustering on the embedding space of the underlying GNN model; extracts embeddings in each cluster; and discovers prototypes, which serve as model explanations, by estimating the maximum common subgraph (MCS) from the extracted embeddings. Experimental evaluation demonstrates that PAGE not only provides high-quality explanations but also outperforms the state-of-the-art model-level method in terms of consistency and faithfulness that are performance metrics for quantitative evaluations.
Yong-Min ShinSunwoo KimWon-Yong Shin
Tingyang ChenDazhuo QiuYinghui WuArijit KhanXiangyu KeYunjun Gao
Alessio RagnoBiagio La RosaRoberto Capobianco
Tingyang ChenDazhuo QiuYinghui WuArijit KhanXiangyu KeYunjun Gao
Junfeng FangXiang WangAn ZhangZemin LiuXiangnan HeTat‐Seng Chua