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波函数随机表示下的无行列式和无导数量子蒙特卡罗方法

Determinant- and Derivative-Free Quantum Monte Carlo Within the Stochastic Representation of Wavefunctions.

作者信息

Bernheimer Liam, Atanasova Hristiana, Cohen Guy

机构信息

Department of Chemical Physics, Tel Aviv University, School of Chemistry, Tel Aviv University, Tel Aviv 69978, Israel, Tel Aviv, 69978, ISRAEL.

出版信息

Rep Prog Phys. 2024 Sep 19. doi: 10.1088/1361-6633/ad7d33.

Abstract

Describing the ground states of continuous, real-space quantum many-body systems, like atoms and molecules, is a significant computational challenge with applications throughout the physical sciences. Recent progress was made by variational methods based on machine learning (ML) ansatzes. However, since these approaches are based on energy minimization, ansatzes must be twice differentiable. This (a) precludes the use of many powerful classes of ML models; and (b) makes the enforcement of bosonic, fermionic, and other symmetries costly. Furthermore, (c) the optimization procedure is often unstable unless it is done by imaginary time propagation, which is often impractically expensive in modern ML models with many parameters. The stochastic representation of wavefunctions (SRW), introduced in Nat Commun 14, 3601 (2023), is a recent approach to overcoming (c). SRW enables imaginary time propagation at scale, and makes some headway towards the solution of problem (b), but remains limited by problem (a). Here, we argue that combining SRW with path integral techniques leads to a new formulation that overcomes all three problems simultaneously. As a demonstration, we apply the approach to generalized ``Hooke's atoms'': interacting particles in harmonic wells. We benchmark our results against state-of-the-art data where possible, and use it to investigate the crossover between the Fermi liquid and the Wigner molecule within closed-shell systems. Our results shed new light on the competition between interaction-driven symmetry breaking and kinetic-energy-driven delocalization.

摘要

描述诸如原子和分子等连续实空间量子多体系统的基态,是一项重大的计算挑战,在整个物理科学领域都有应用。基于机器学习(ML)假设的变分方法取得了近期进展。然而,由于这些方法基于能量最小化,假设必须是二次可微的。这(a)排除了许多强大类别的ML模型的使用;并且(b)使得施加玻色子、费米子和其他对称性的成本很高。此外,(c)优化过程通常不稳定,除非通过虚时传播来进行,而在具有许多参数的现代ML模型中,虚时传播通常成本过高而不切实际。发表于《自然通讯》14, 3601 (2023)的波函数的随机表示(SRW)是一种克服(c)的近期方法。SRW能够在大规模上进行虚时传播,并在解决问题(b)方面取得了一些进展,但仍然受到问题(a)的限制。在这里,我们认为将SRW与路径积分技术相结合会产生一种新的公式化方法,能同时克服所有这三个问题。作为一个演示,我们将该方法应用于广义的“胡克原子”:谐振子阱中的相互作用粒子。我们尽可能将我们的结果与最先进的数据进行基准比较,并用它来研究闭壳层系统中费米液体和维格纳分子之间的转变。我们的结果为相互作用驱动的对称性破缺和动能驱动的离域化之间的竞争提供了新的见解。

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