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HamNet: Conformation-Guided Molecular Representation with Hamiltonian Neural Networks

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arxiv 2105.03688 v1 pith:DHGZKOPT submitted 2021-05-08 cs.LG cs.CVphysics.chem-ph

HamNet: Conformation-Guided Molecular Representation with Hamiltonian Neural Networks

classification cs.LG cs.CVphysics.chem-ph
keywords molecularhamiltonianconformationshamnetenginefingerprintsimplicitlearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Well-designed molecular representations (fingerprints) are vital to combine medical chemistry and deep learning. Whereas incorporating 3D geometry of molecules (i.e. conformations) in their representations seems beneficial, current 3D algorithms are still in infancy. In this paper, we propose a novel molecular representation algorithm which preserves 3D conformations of molecules with a Molecular Hamiltonian Network (HamNet). In HamNet, implicit positions and momentums of atoms in a molecule interact in the Hamiltonian Engine following the discretized Hamiltonian equations. These implicit coordinations are supervised with real conformations with translation- & rotation-invariant losses, and further used as inputs to the Fingerprint Generator, a message-passing neural network. Experiments show that the Hamiltonian Engine can well preserve molecular conformations, and that the fingerprints generated by HamNet achieve state-of-the-art performances on MoleculeNet, a standard molecular machine learning benchmark.

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