Neural network backflow for ab initio quantum chemistry

IF 3.7 2区 物理与天体物理 Q1 Physics and Astronomy Physical Review B Pub Date : 2024-09-18 DOI:10.1103/physrevb.110.115137
An-Jun Liu, Bryan K. Clark
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Abstract

The ground state of second-quantized quantum chemistry Hamiltonians provides access to an important set of chemical properties. Wave functions based on machine-learning architectures have shown promise in approximating these ground states in a variety of physical systems. In this paper, we show how to achieve state-of-the-art energies for molecular Hamiltonians using the the neural network backflow (NNBF) wave function. To accomplish this, we optimize this ansatz with a variant of the deterministic optimization scheme based on selected configuration interaction introduced by Li et al., [J. Chem. Theory Comput. 19, 8156 (2023)], which we find works better than standard Markov chain Monte Carlo sampling. For the molecules we studied, NNBF gives lower energy states than both Coupled Cluster with Single and Double excitations and other neural network quantum states. We systematically explore the role of network size as well as optimization parameters in improving the energy. We find that, while the number of hidden layers and determinants play a minor role in improving the energy, there are significant improvements in the energy from increasing the number of hidden units as well as the batch size used in optimization, with the batch size playing a more important role.

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用于自证量子化学的神经网络回流
二次量化量子化学哈密顿的基态提供了一组重要的化学特性。基于机器学习架构的波函数在近似各种物理系统的基态方面已显示出前景。在本文中,我们展示了如何利用神经网络逆流(NNBF)波函数实现最先进的分子哈密顿能量。为了实现这一目标,我们采用了 Li 等人[J. Chem. Theory Comput. 19, 8156 (2023)]介绍的基于选定构型相互作用的确定性优化方案的变体来优化该反演,我们发现它比标准的马尔科夫链蒙特卡罗采样效果更好。对于我们研究的分子,NNBF 所给出的能态低于单激发和双激发耦合簇以及其他神经网络量子态。我们系统地探讨了网络规模和优化参数在提高能量方面的作用。我们发现,虽然隐藏层数和行列式对提高能量的作用较小,但增加隐藏单元的数量以及优化中使用的批量大小却能显著提高能量,其中批量大小的作用更为重要。
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来源期刊
Physical Review B
Physical Review B 物理-物理:凝聚态物理
CiteScore
6.70
自引率
32.40%
发文量
0
审稿时长
3.0 months
期刊介绍: Physical Review B (PRB) is the world’s largest dedicated physics journal, publishing approximately 100 new, high-quality papers each week. The most highly cited journal in condensed matter physics, PRB provides outstanding depth and breadth of coverage, combined with unrivaled context and background for ongoing research by scientists worldwide. PRB covers the full range of condensed matter, materials physics, and related subfields, including: -Structure and phase transitions -Ferroelectrics and multiferroics -Disordered systems and alloys -Magnetism -Superconductivity -Electronic structure, photonics, and metamaterials -Semiconductors and mesoscopic systems -Surfaces, nanoscience, and two-dimensional materials -Topological states of matter
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