Delta-Learning approach combined with the cluster Gutzwiller approximation for strongly correlated bosonic systems

Zhi Lin, Tong Wang, Sheng Yue
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Abstract

The cluster Gutzwiller method is widely used to study the strongly correlated bosonic systems, owing to its ability to provide a more precise description of quantum fluctuations. However, its utility is limited by the exponential increase in computational complexity as the cluster size grows. To overcome this limitation, we propose an artificial intelligence-based method known as $\Delta$-Learning. This approach constructs a predictive model by learning the discrepancies between lower-precision (small cluster sizes) and high-precision (large cluster sizes) implementations of the cluster Gutzwiller method, requiring only a small number of training samples. Using this predictive model, we can effectively forecast the outcomes of high-precision methods with high accuracy. Applied to various Bose-Hubbard models, the $\Delta$-Learning method effectively predicts phase diagrams while significantly reducing the computational resources and time. Furthermore, we have compared the predictive accuracy of $\Delta$-Learning with other direct learning methods and found that $\Delta$-Learning exhibits superior performance in scenarios with limited training data. Therefore, when combined with the cluster Gutzwiller approximation, the $\Delta$-Learning approach offers a computationally efficient and accurate method for studying phase transitions in large, complex bosonic systems.
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强相关玻色子系统的德尔塔学习方法与集群古茨维勒近似相结合
集群古茨维勒方法能够更精确地描述量子波动,因此被广泛用于研究强相关玻色子系统。然而,随着簇规模的增大,计算复杂度呈指数增长,这限制了它的实用性。为了克服这一限制,我们提出了一种基于人工智能的方法,即 "Δ元学习"($\Delta$-Learning)。这种方法通过学习聚类 Gutzwiller 方法的低精度(小聚类规模)和高精度(大聚类规模)实现之间的差异来构建预测模型,只需要少量的训练样本。利用这一预测模型,我们可以有效地高精度预测高精度方法的结果。将$\Delta$-Learning方法应用于各种玻色-哈伯德模型,可以有效地预测相图,同时大大减少了计算资源和时间。此外,我们还比较了$\Delta$-Learning与其他直接学习方法的预测精度,发现$\Delta$-Learning在训练数据有限的情况下表现出更优越的性能。因此,当与集群古茨维勒逼近相结合时,$\Delta$-Learning方法为研究大型复杂玻色系统的相变提供了一种计算高效且精确的方法。
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