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A Self-Attention Ansatz for Ab-initio Quantum Chemistry

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We present a novel neural network architecture using self-attention, the Wavefunction Transformer (Psiformer), which can be used as an approximation (or Ansatz) for solving the many-electron Schr\"odinger equation, the fundamental equation for quantum chemistry and material science. This equation can be solved from first principles, requiring no external training data. In recent years, deep neural networks like the FermiNet and PauliNet have been used to significantly improve the accuracy of these first-principle calculations, but they lack an attention-like mechanism for gating interactions between electrons. Here we show that the Psiformer can be used as a drop-in replacement for these other neural networks, often dramatically improving the accuracy of the calculations. On larger molecules especially, the ground state energy can be improved by dozens of kcal/mol, a qualitative leap over previous methods. This demonstrates that self-attention networks can learn complex quantum mechanical correlations between electrons, and are a promising route to reaching unprecedented accuracy in chemical calculations on larger systems.

Ingrid von Glehn, James S. Spencer, David Pfau• 2022

Related benchmarks

TaskDatasetResultRank
Ground-state energy estimationB 5
Relative Energy Error9.01e-6
3
Ground-state energy estimationBe
Relative Energy Error1.50e-5
3
Ground-state energy estimationLi2
Relative Energy Error4.43e-5
3
Ground-state energy estimationH10
Relative Energy Error4.24e-4
3
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