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Constructing exact representations of quantum many-body systems with deep neural networks

机译:用深度神经网络构造量子多体系统的精确表示

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摘要

Obtaining accurate properties of many-body interacting quantum matter is a long-standing challenge in theoretical physics and chemistry, rooting into the complexity of the many-body wave-function. Classical representations of many-body states constitute a key tool for both analytical and numerical approaches to interacting quantum problems. Here, we introduce a technique to construct classical representations of many-body quantum systems based on artificial neural networks. Our constructions are based on the deep Boltzmann machine architecture, in which two layers of hidden neurons mediate quantum correlations. The approach reproduces the exact imaginary-time evolution for many-body lattice Hamiltonians, is completely deterministic, and yields networks with a polynomially-scaling number of neurons. We provide examples where physical properties of spin Hamiltonians can be efficiently obtained. Also, we show how systematic improvements upon existing restricted Boltzmann machines ansatze can be obtained. Our method is an alternative to the standard path integral and opens new routes in representing quantum many-body states.
机译:获得多体相互作用量子物质的准确特性是理论物理学和化学领域的一项长期挑战,其根源在于多体波函数的复杂性。多体状态的经典表示是相互作用的量子问题的分析和数值方法的关键工具。在这里,我们介绍一种基于人工神经网络构造多体量子系统经典表示的技术。我们的构造基于深层的Boltzmann机器架构,其中两层隐藏的神经元介导了量子相关性。该方法再现了多体晶格哈密顿量的精确虚时演化,是完全确定性的,并产生了具有神经元数量级缩放比例的网络。我们提供了可以有效获得自旋哈密顿量的物理性质的示例。同样,我们展示了如何在现有的受限玻尔兹曼机分析仪上获得系统的改进。我们的方法是标准路径积分的替代方法,并且在表示量子多体状态方面开辟了新的路径。

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