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Classification of nodal pockets in many-electron wave functions via machine learning

机译:通过机器学习对多电子波函数中的节点袋进行分类

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Accurate treatment of electron correlation in quantum chemistry requires solving the many-electron problem. If the nodal surface of a many-electron wave function is available even in an approximate form, the fixed-node diffusion Monte Carlo (FNDMC) approach from the family of quantum Monte Carlo methods can be successfully used for this purpose. The issue of description and classification of nodal surfaces of fermionic wave functions becomes central for understanding the basic properties of many-electron wave functions and for the control of accuracy and computational efficiency of FNDMC computations. In this work, we approach the problem of automatic classification of nodal pockets of many-electron wave functions. We formulate this problem as that of binary classification and apply a number of techniques from the machine learning literature. We apply these techniques on a range of atoms of light elements and demonstrate varying degrees of success. We observe that classifiers with relatively simple geometry perform poorly on the classification task; methods based on a random collection of tree-based classifiers appear to perform best. We conclude with thoughts on computational challenges and complexity associated with applying these techniques to heavier atoms.
机译:在量子化学中正确处理电子相关性需要解决多电子问题。如果甚至可以以近似形式获得多电子波函数的节点面,则量子蒙特卡洛方法族的固定节点扩散蒙特卡洛(FNDMC)方法可以成功地用于此目的。费米电子波函数的节点表面的描述和分类问题对于理解多电子波函数的基本特性以及控制FNDMC计算的准确性和计算效率变得至关重要。在这项工作中,我们解决了多电子波函数的节点袋自动分类的问题。我们将此问题表述为二进制分类的问题,并应用了机器学习文献中的许多技术。我们将这些技术应用于一系列轻元素原子上,并展示出不同程度的成功。我们观察到,具有相对简单几何形状的分类器在分类任务上的表现很差;基于随机分类的基于树的分类器的方法似乎表现最佳。我们以对将这些技术应用于重原子的计算挑战和复杂性的思考作为结束。

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