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Quantum Deep Descriptor: Physically Informed Transfer Learning from Small Molecules to Polymers.

Masashi TsubakiTeruyasu Mizoguchi
Published in: Journal of chemical theory and computation (2021)
In this study, we propose a physically informed transfer learning approach for materials informatics (MI) using a quantum deep descriptor (QDD) obtained from the quantum deep field (QDF). The QDF is a machine learning model based on density functional theory (DFT) and can be trained with a large database of molecular properties. The pre-trained QDF model can provide an effective molecular descriptor that encodes the fundamental quantum-chemical characteristics (i.e., the wave function or orbital, electron density, and energies of a molecule) learned from the large database; we refer to this descriptor as a QDD. We show that a QDD pre-trained with certain properties of small molecules can predict different properties (e.g., the band gap and dielectric constant) of polymers compared with some existing descriptors. We believe that our DFT-based, physically informed transfer learning approach will not only be useful for practical applications in MI but will also provide quantum-chemical insights into materials in the future. All codes used in this study are available at https://github.com/masashitsubaki.
Keyphrases
  • density functional theory
  • molecular dynamics
  • machine learning
  • resistance training
  • energy transfer
  • monte carlo
  • big data
  • single molecule
  • electron transfer
  • current status
  • electronic health record