Motif-based Graph Self-Supervised Learning for Molecular Property Prediction
–Neural Information Processing Systems
Predicting molecular properties with data-driven methods has drawn much attention in recent years. Particularly, Graph Neural Networks (GNNs) have demonstrated remarkable success in various molecular generation and prediction tasks. In cases where labeled data is scarce, GNNs can be pre-trained on unlabeled molecular data to first learn the general semantic and structural information before being finetuned for specific tasks. However, most existing self-supervised pretraining frameworks for GNNs only focus on node-level or graph-level tasks. For example, functional groups (frequently-occurred subgraphs in molecular graphs) often carry indicative information about the molecular properties.
Neural Information Processing Systems
Oct-11-2024, 14:54:36 GMT
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