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Uncertainty in Graph Contrastive Learning with Bayesian Neural Networks

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arxiv 2312.00232 v1 pith:4KG27CZL submitted 2023-11-30 cs.LG cs.AIstat.ML

Uncertainty in Graph Contrastive Learning with Bayesian Neural Networks

classification cs.LG cs.AIstat.ML
keywords uncertaintycontrastivelearningbayesiangraphneuralaccountapproach
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Graph contrastive learning has shown great promise when labeled data is scarce, but large unlabeled datasets are available. However, it often does not take uncertainty estimation into account. We show that a variational Bayesian neural network approach can be used to improve not only the uncertainty estimates but also the downstream performance on semi-supervised node-classification tasks. Moreover, we propose a new measure of uncertainty for contrastive learning, that is based on the disagreement in likelihood due to different positive samples.

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