MolE: a foundation model for molecular graphs using disentangled attention
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DOI: 10.1038/s41467-024-53751-y
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- Keith T. Butler & Daniel W. Davies & Hugh Cartwright & Olexandr Isayev & Aron Walsh, 2018. "Machine learning for molecular and materials science," Nature, Nature, vol. 559(7715), pages 547-555, July.
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