论文标题
小量子簇的神经网络求解器
Neural Network Solver for Small Quantum Clusters
论文作者
论文摘要
机器学习方法最近已应用于对物理学各种问题的研究。大多数研究的重点是解释传统数值方法或现有数据库生成的数据。一个有趣的问题是,是否可以使用机器学习方法,尤其是神经网络来解决多体问题。在本文中,我们提出了一个基于神经网络的小簇相互作用的量子问题的求解器。我们研究模拟单个杂质安德森模型的小量子簇。我们证明,基于神经网络的求解器与精确的对角线化方法相比,基于神经网络的求解器为光谱函数提供了定量准确的结果。这打开了利用神经网络方法作为其他许多身体数值方法的杂质求解器,例如动态平均场理论。
Machine learning approaches have recently been applied to the study of various problems in physics. Most of the studies are focused on interpreting the data generated by conventional numerical methods or an existing database. An interesting question is whether it is possible to use a machine learning approach, in particular a neural network, for solving the many-body problem. In this paper, we present a solver for interacting quantum problem for small clusters based on the neural network. We study the small quantum cluster which mimics the single impurity Anderson model. We demonstrate that the neural network based solver provides quantitatively accurate results for the spectral function as compared to the exact diagonalization method. This opens the possibility of utilizing the neural network approach as an impurity solver for other many body numerical approaches, such as dynamical mean field theory.