Uncertainty-Aware Graph Neural Networks: A Multihop Evidence Fusion Approach

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Author(s)
Chen, Qingfeng
Li, Shiyuan
Liu, Yixin
Pan, Shirui
Webb, Geoffrey I
Zhang, Shichao
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2025
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Abstract

Graph neural networks (GNNs) excel in graph representation learning by integrating graph structure and node features. Existing GNNs, unfortunately, fail to account for the uncertainty of class probabilities that vary with the depth of the model, leading to unreliable and risky predictions in real-world scenarios. To bridge the gap, in this article, we propose a novel evidence-fusing graph neural network (EFGNN) to achieve trustworthy prediction, enhance node classification accuracy, and make explicit the risk of wrong predictions. In particular, we integrate the evidence theory with multihop propagation-based GNN architecture to quantify the prediction uncertainty of each node with the consideration of multiple receptive fields. Moreover, a parameter-free cumulative belief fusion (CBF) mechanism is developed to leverage the changes in prediction uncertainty and fuse the evidence to improve the trustworthiness of the final prediction. To effectively optimize the EFGNN model, we carefully design a joint learning objective composed of evidence cross-entropy, dissonance coefficient, and false confident penalty. The experimental results on various datasets and theoretical analyses demonstrate the effectiveness of the proposed model in terms of accuracy and trustworthiness, as well as its robustness to potential attacks.

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IEEE Transactions on Neural Networks and Learning Systems

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This publication has been entered in Griffith Research Online as an advance online version.

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Neural networks

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Chen, Q; Li, S; Liu, Y; Pan, S; Webb, GI; Zhang, S, Uncertainty-Aware Graph Neural Networks: A Multihop Evidence Fusion Approach, IEEE Transactions on Neural Networks and Learning Systems, 2025