Molecular Contrastive Pretraining with Collaborative Featurizations
Yanqiao Zhu,
Dingshuo Chen,
Yuanqi Du
et al.
Abstract:Molecular pretraining, which learns molecular representations over massive unlabeled data, has become a prominent paradigm to solve a variety of tasks in computational chemistry and drug discovery. Recently, prosperous progress has been made in molecular pretraining with different molecular featurizations, including 1D SMILES strings, 2D graphs, and 3D geometries. However, the role of molecular featurizations with their corresponding neural architectures in molecular pretraining remains largely unexamined. In … Show more
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