Classifying snapshots of the doped Hubbard model with machine learning

被引:0
|
作者
Annabelle Bohrdt
Christie S. Chiu
Geoffrey Ji
Muqing Xu
Daniel Greif
Markus Greiner
Eugene Demler
Fabian Grusdt
Michael Knap
机构
[1] Technical University of Munich,Department of Physics and Institute for Advanced Study
[2] Harvard University,Department of Physics
[3] Munich Center for Quantum Science and Technology,undefined
来源
Nature Physics | 2019年 / 15卷
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摘要
Quantum gas microscopes for ultracold atoms can provide high-resolution real-space snapshots of complex many-body systems. We implement machine learning to analyse and classify such snapshots of ultracold atoms. Specifically, we compare the data from an experimental realization of the two-dimensional Fermi–Hubbard model to two theoretical approaches: a doped quantum spin liquid state of resonating valence bond type1,2, and the geometric string theory3,4, describing a state with hidden spin order. This technique considers all available information without a potential bias towards one particular theory by the choice of an observable and can therefore select the theory that is more predictive in general. Up to intermediate doping values, our algorithm tends to classify experimental snapshots as geometric-string-like, as compared to the doped spin liquid. Our results demonstrate the potential for machine learning in processing the wealth of data obtained through quantum gas microscopy for new physical insights.
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页码:921 / 924
页数:3
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