可见的
波函数
统计物理学
量子
偶极子
人工神经网络
而量子蒙特卡罗
计算机科学
空格(标点符号)
功能(生物学)
电子
物理
量子力学
蒙特卡罗方法
计算物理学
人工智能
数学
进化生物学
生物
统计
操作系统
作者
Lixue Cheng,P. Bernát Szabó,Zeno Schätzle,Derk P. Kooi,Jonas Köhler,Klaas J. H. Giesbertz,Frank Noé,Jan Hermann,Paola Gori‐Giorgi,Adam Foster
摘要
Variational ab initio methods in quantum chemistry stand out among other methods in providing direct access to the wave function. This allows, in principle, straightforward extraction of any other observable of interest, besides the energy, but, in practice, this extraction is often technically difficult and computationally impractical. Here, we consider the electron density as a central observable in quantum chemistry and introduce a novel method to obtain accurate densities from real-space many-electron wave functions by representing the density with a neural network that captures known asymptotic properties and is trained from the wave function by score matching and noise-contrastive estimation. We use variational quantum Monte Carlo with deep-learning Ansätze to obtain highly accurate wave functions free of basis set errors and from them, using our novel method, correspondingly accurate electron densities, which we demonstrate by calculating dipole moments, nuclear forces, contact densities, and other density-based properties.
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