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On Calibration of Graph Neural Networks for Node Classification

Authors :
Liu, Tong
Liu, Yushan
Hildebrandt, Marcel
Joblin, Mitchell
Li, Hang
Tresp, Volker
Publication Year :
2022

Abstract

Graphs can model real-world, complex systems by representing entities and their interactions in terms of nodes and edges. To better exploit the graph structure, graph neural networks have been developed, which learn entity and edge embeddings for tasks such as node classification and link prediction. These models achieve good performance with respect to accuracy, but the confidence scores associated with the predictions might not be calibrated. That means that the scores might not reflect the ground-truth probabilities of the predicted events, which would be especially important for safety-critical applications. Even though graph neural networks are used for a wide range of tasks, the calibration thereof has not been sufficiently explored yet. We investigate the calibration of graph neural networks for node classification, study the effect of existing post-processing calibration methods, and analyze the influence of model capacity, graph density, and a new loss function on calibration. Further, we propose a topology-aware calibration method that takes the neighboring nodes into account and yields improved calibration compared to baseline methods.<br />Comment: Accepted by IJCNN 2022 (IEEE WCCI 2022)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2206.01570
Document Type :
Working Paper