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Multi-task learning for molecular electronic structure approaching coupled-cluster accuracy

ORAL

Abstract

Machine learning (ML) plays an important role in quantum chemistry, providing fast-to-evaluate predictive models for various properties of molecules. However, most existing ML models for molecular electronic properties use density functional theory (DFT) databases as ground truth in training, and their prediction accuracy cannot surpass that of DFT. In this work, we developed a unified ML method for electronic structures of organic molecules using the gold-standard CCSD(T) calculations as training data. Tested on hydrocarbon molecules and the QM9 quantum chemistry dataset, our model outperforms DFT with several widely-used hybrid and double hybrid functionals in both computational costs and prediction accuracy of various quantum chemical properties. As case studies, we apply the model to aromatic compounds and semiconducting polymers on both ground state and excited state properties, demonstrating its accuracy and generalization capability to complex systems that are hard to calculate using CCSD(T)-level methods.

Publication: arXiv:2405.12229

Presenters

  • Hao Tang

    Massachusetts Institute of Technology

Authors

  • Hao Tang

    Massachusetts Institute of Technology

  • Brian Xiao

    UC Berkeley

  • Wenhao He

    Massachusetts Institute of Technology

  • Yao Wang

    Clemson University, Emory University

  • Fang Liu

    Emory University

  • Haowei Xu

    Massachusetts Institute of Technology

  • Ju Li

    Massachusetts Institute of Technology