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This work provides a theoretical framework for assessing the generalization error of graph classification tasks via graph neural networks in the over-parameterized regime, where the number of parameters surpasses the quantity of data points. We explore two widely utilized types of graph neural networks: graph convolutional neural networks and message passing graph neural networks. Prior to this study, existing bounds on the generalization error in the over-parametrized regime were uninformative, limiting our understanding of over-parameterized network performance. Our novel approach involves deriving upper bounds within the mean-field regime for evaluating the generalization error of these graph neural networks. We establish upper bounds with a convergence rate of O (1/n), where n is the number of graph samples. These upper bounds offer a theoretical assurance of the networks' performance on unseen data in the challenging over-parameterized regime and overall contribute to our understanding of their performance.
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Gholamali Aminian
The Alan Turing Institute
Yixuan He
Hunan Institute of Science and Technology
Gesine Reinert
Turing Institute
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Aminian et al. (Sat,) studied this question.
synapsesocial.com/papers/68e79adbb6db64358770b4c4 — DOI: https://doi.org/10.48550/arxiv.2402.07025
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