$O(N^2)$ Universal Antisymmetry in Fermionic Neural Networks
Abstract
Fermionic neural network (FermiNet) is a recently proposed wavefunction Ansatz, which is used in variational Monte Carlo (VMC) methods to solve the many-electron Schr\"odinger equation. FermiNet proposes permutation-equivariant architectures, on which a Slater determinant is applied to induce antisymmetry. FermiNet is proved to have universal approximation capability with a single determinant, namely, it suffices to represent any antisymmetric function given sufficient parameters. However, the asymptotic computational bottleneck comes from the Slater determinant, which scales with $O(N^3)$ for $N$ electrons. In this paper, we substitute the Slater determinant with a pairwise antisymmetry construction, which is easy to implement and can reduce the computational cost to $O(N^2)$. We formally prove that the pairwise construction built upon permutation-equivariant architectures can universally represent any antisymmetric function. Besides, this universality can be achieved via continuous approximators when we aim to represent ground-state wavefunctions.
Cite
Text
Pang et al. "$O(N^2)$ Universal Antisymmetry in Fermionic Neural Networks." ICML 2022 Workshops: AI4Science, 2022.Markdown
[Pang et al. "$O(N^2)$ Universal Antisymmetry in Fermionic Neural Networks." ICML 2022 Workshops: AI4Science, 2022.](https://mlanthology.org/icmlw/2022/pang2022icmlw-universal/)BibTeX
@inproceedings{pang2022icmlw-universal,
title = {{$O(N^2)$ Universal Antisymmetry in Fermionic Neural Networks}},
author = {Pang, Tianyu and Yan, Shuicheng and Lin, Min},
booktitle = {ICML 2022 Workshops: AI4Science},
year = {2022},
url = {https://mlanthology.org/icmlw/2022/pang2022icmlw-universal/}
}