CHEM-PHLGCOMP-PHSep 5, 2019

Ab-Initio Solution of the Many-Electron Schrödinger Equation with Deep Neural Networks

arXiv:1909.02487v3590 citations
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This work addresses the challenge of accurate quantum chemistry simulations for strongly-correlated systems, potentially enabling new discoveries in materials and drug design, though it is incremental as it builds on existing variational quantum Monte Carlo methods.

The authors tackled the problem of approximating the many-electron Schrödinger equation by introducing the Fermionic Neural Network as a wavefunction Ansatz, achieving higher accuracy than coupled cluster methods on molecules like nitrogen and hydrogen chains without using data beyond atomic positions and charges.

Given access to accurate solutions of the many-electron Schrödinger equation, nearly all chemistry could be derived from first principles. Exact wavefunctions of interesting chemical systems are out of reach because they are NP-hard to compute in general, but approximations can be found using polynomially-scaling algorithms. The key challenge for many of these algorithms is the choice of wavefunction approximation, or Ansatz, which must trade off between efficiency and accuracy. Neural networks have shown impressive power as accurate practical function approximators and promise as a compact wavefunction Ansatz for spin systems, but problems in electronic structure require wavefunctions that obey Fermi-Dirac statistics. Here we introduce a novel deep learning architecture, the Fermionic Neural Network, as a powerful wavefunction Ansatz for many-electron systems. The Fermionic Neural Network is able to achieve accuracy beyond other variational quantum Monte Carlo Ansätze on a variety of atoms and small molecules. Using no data other than atomic positions and charges, we predict the dissociation curves of the nitrogen molecule and hydrogen chain, two challenging strongly-correlated systems, to significantly higher accuracy than the coupled cluster method, widely considered the most accurate scalable method for quantum chemistry at equilibrium geometry. This demonstrates that deep neural networks can improve the accuracy of variational quantum Monte Carlo to the point where it outperforms other ab-initio quantum chemistry methods, opening the possibility of accurate direct optimization of wavefunctions for previously intractable many-electron systems.

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