\begin{document}$R(x)=\displaystyle\int {\rm{d}}y S(y-x) \left[I(y) K(U_y)\right]$\end{document}, where \begin{document}$R(x)$\end{document} denotes the real-part distribution, \begin{document}$I(x)$\end{document} the imaginary-part distribution, \begin{document}$S(x)$\end{document} the underlying signal distribution and \begin{document}$K(U_x)$\end{document} a kernel function of the gauge field. This theoretical assumption has universal validity because the kernel function contains the gauge field information that determines all the distributions. The formula is numerically verified by calculating the non-trivial statistical correlations of the real part and the kernel-function-modified imaginary part under the further assumption of the kernel function. It is found that the most naïve guess of \begin{document}$K(U_x)=1$\end{document} does not work, which leads to no statistically significant correlation. Meanwhile, the assumption that \begin{document}$K(U_x)$\end{document} is only a sign function works well, giving rise to \begin{document}$\sim70\%$\end{document} correlation. Then, through the process of adding random distortions to the absolute values of the imaginary part, it is found that even a slight distortion, of around 1% could result in a significant reduction in the correlation between the real part and imaginary part down to less than 50% or lower. This essentially proves that the observed \begin{document}$\sim70\%$\end{document} correlation is highly non-trivial and the hypothesis that \begin{document}$K(U_x)$\end{document} is a sign function captures at least some of the physical mechanisms behind the scenes. Employing this correlation, the variance of lattice results can be improved by around 40%. It is not a significant improvement in practice; however, this study offers an innovative strategy to understand the source of statistical uncertainties in lattice QCD and to improve the signal-to-noise ratio in lattice calculation. Further research on the ability to use machine learning on various more accurate lattice data will hopefully give better instructions and constraint on the form of the kernel function."> - 必威体育下载

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Hong Hao-Yi, Gao Mei-Qi, Gui Long-Cheng, Hua Jun, Liang Jian, Shi Jun, Zou Jin-Tao
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  • Understanding the statistical fluctuations of lattice observables over the gauge configurations is important both theoretically and practically. It provides a physical insight into tackling the famous signal-to-noise problem and the sign problem, and inspires new thoughts in developing methods to improve the signal of lattice calculations. Among many efforts, exploring the relationship between the real part and imaginary part of lattice numerical result is a new method to understand lattice signal and error, because both the real part and imaginary part come from the same sample of gauge field and their distributions on the gauge sample are related in principle. Specifically, by analyzing the distributions of the real part and imaginary part of quenched lattice two-point function with high statistics and non-zero momentum, this work proposes a possible quantitative formula connecting these two distributions as $R(x)=\displaystyle\int {\rm{d}}y S(y-x) \left[I(y) K(U_y)\right]$ , where $R(x)$ denotes the real-part distribution, $I(x)$ the imaginary-part distribution, $S(x)$ the underlying signal distribution and $K(U_x)$ a kernel function of the gauge field. This theoretical assumption has universal validity because the kernel function contains the gauge field information that determines all the distributions. The formula is numerically verified by calculating the non-trivial statistical correlations of the real part and the kernel-function-modified imaginary part under the further assumption of the kernel function. It is found that the most naïve guess of $K(U_x)=1$ does not work, which leads to no statistically significant correlation. Meanwhile, the assumption that $K(U_x)$ is only a sign function works well, giving rise to $\sim70\%$ correlation. Then, through the process of adding random distortions to the absolute values of the imaginary part, it is found that even a slight distortion, of around 1% could result in a significant reduction in the correlation between the real part and imaginary part down to less than 50% or lower. This essentially proves that the observed $\sim70\%$ correlation is highly non-trivial and the hypothesis that $K(U_x)$ is a sign function captures at least some of the physical mechanisms behind the scenes. Employing this correlation, the variance of lattice results can be improved by around 40%. It is not a significant improvement in practice; however, this study offers an innovative strategy to understand the source of statistical uncertainties in lattice QCD and to improve the signal-to-noise ratio in lattice calculation. Further research on the ability to use machine learning on various more accurate lattice data will hopefully give better instructions and constraint on the form of the kernel function.
        Corresponding author:Gui Long-Cheng,guilongcheng@hunnu.edu.cn; Liang Jian,jianliang@scnu.edu.cn; Shi Jun,jun.shi@scnu.edu.cn;
      • Funds:Project supported by the Excellent Young Scientists Fund of the National Natural Science Foundation of China (Grant No. 12222503), the National Natural Science Foundation of China (Grant Nos. 12175073, 12175063), the Young Scientists Fund of the National Natural Science Foundation of China (Grant Nos. 12105108, 12205106), the Natural Science Foundation of Basic and Applied Basic Research of Guangdong Province, China (Grant No. 2023A1515012712), and the Natural Science Foundation of Hunan Province, China (Grant No. 2023JJ30380).
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    Metrics
    • Abstract views:2611
    • PDF Downloads:56
    • Cited By:0
    Publishing process
    • Received Date:27 May 2023
    • Accepted Date:30 June 2023
    • Available Online:13 July 2023
    • Published Online:20 October 2023

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