TY - GEN
T1 - HGExplainer
T2 - 22nd IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology, WI-IAT 2023
AU - Mika, Grzegorz P.
AU - Bouzeghoub, Amel
AU - Wegrzyn-Wolska, Katarzyna
AU - Neggaz, Yessin M.
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023/1/1
Y1 - 2023/1/1
N2 - Graph Neural Networks (GNNs) are an effective framework for graph representation learning in real-world applications. However, despite their increasing success, they remain notoriously challenging to interpret, and their predictions are hard to explain. Nowadays, several recent works have proposed methods to explain the decisions made by GNNs. However, they only aggregate information from the same type of neighbors or indiscriminately treat homogeneous and heterogeneous neighbors similarly. Based on these observations, we propose HGExplainer, an explainer for heterogeneous GNNs to comprehensively capture structural, semantic, and attribute information from homogeneous and heterogeneous neighbors. We first train the GNN model to represent the predictions on a heterogeneous network. To make the explainable predictions, we design the model to capture heterogeneity information in calculating the joint mutual information maximization, extracting the meta-path-based graph sampling to generate more prosperous and more accurate explanations. Finally, we evaluate our explainable method on synthetic and real-life datasets and perform concrete case studies. Extensive results show that HGExplainer can provide inherent explanations while achieving high accuracy.
AB - Graph Neural Networks (GNNs) are an effective framework for graph representation learning in real-world applications. However, despite their increasing success, they remain notoriously challenging to interpret, and their predictions are hard to explain. Nowadays, several recent works have proposed methods to explain the decisions made by GNNs. However, they only aggregate information from the same type of neighbors or indiscriminately treat homogeneous and heterogeneous neighbors similarly. Based on these observations, we propose HGExplainer, an explainer for heterogeneous GNNs to comprehensively capture structural, semantic, and attribute information from homogeneous and heterogeneous neighbors. We first train the GNN model to represent the predictions on a heterogeneous network. To make the explainable predictions, we design the model to capture heterogeneity information in calculating the joint mutual information maximization, extracting the meta-path-based graph sampling to generate more prosperous and more accurate explanations. Finally, we evaluate our explainable method on synthetic and real-life datasets and perform concrete case studies. Extensive results show that HGExplainer can provide inherent explanations while achieving high accuracy.
KW - Explainable Artificial Intelligence (XAI)
KW - Graph Neural Networks (GNNs)
KW - Heterogeneous Networks
KW - Recom-mender Systems
KW - Trustworthy
U2 - 10.1109/WI-IAT59888.2023.00035
DO - 10.1109/WI-IAT59888.2023.00035
M3 - Conference contribution
AN - SCOPUS:85182523894
T3 - Proceedings - 2023 22nd IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology, WI-IAT 2023
SP - 221
EP - 229
BT - Proceedings - 2023 22nd IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology, WI-IAT 2023
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 26 October 2023 through 29 October 2023
ER -