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Pre-training Molecular Graph Representation with 3D Geometry

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arxiv 2110.07728 v2 pith:GAP6YEFT submitted 2021-10-07 cs.LG cs.CVeess.IVq-bio.QM

Pre-training Molecular Graph Representation with 3D Geometry

classification cs.LG cs.CVeess.IVq-bio.QM
keywords graphmoleculargraphmvpgeometriclearningrepresentationgeometryinformation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Molecular graph representation learning is a fundamental problem in modern drug and material discovery. Molecular graphs are typically modeled by their 2D topological structures, but it has been recently discovered that 3D geometric information plays a more vital role in predicting molecular functionalities. However, the lack of 3D information in real-world scenarios has significantly impeded the learning of geometric graph representation. To cope with this challenge, we propose the Graph Multi-View Pre-training (GraphMVP) framework where self-supervised learning (SSL) is performed by leveraging the correspondence and consistency between 2D topological structures and 3D geometric views. GraphMVP effectively learns a 2D molecular graph encoder that is enhanced by richer and more discriminative 3D geometry. We further provide theoretical insights to justify the effectiveness of GraphMVP. Finally, comprehensive experiments show that GraphMVP can consistently outperform existing graph SSL methods.

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Cited by 7 Pith papers

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