Cross Validation in Stochastic Analytic Continuation

Gabe Schumm, Sibin Yang, Anders Sandvik
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Abstract

Stochastic Analytic Continuation (SAC) of Quantum Monte Carlo (QMC) imaginary-time correlation function data is a valuable tool in connecting many-body models to experiments. Recent developments of the SAC method have allowed for spectral functions with sharp features, e.g. narrow peaks and divergent edges, to be resolved with unprecedented fidelity. Often times, it is not known what exact sharp features are present a priori, and, due to the ill-posed nature of the analytic continuation problem, multiple spectral representations may be acceptable. In this work, we borrow from the machine learning and statistics literature and implement a cross validation technique to provide an unbiased method to identify the most likely spectrum. We show examples using imaginary-time data generated by QMC simulations and synthetic data generated from artificial spectra. Our procedure, which can be considered a form of "model selection," can be applied to a variety of numerical analytic continuation methods, beyond just SAC.
随机分析连续性中的交叉验证
量子蒙特卡罗(QMC)虚时相关函数数据的随机分析续集(SAC)是连接多体模型与实验的重要工具。SAC 方法的最新发展使得具有尖锐特征(如窄峰和发散边缘)的谱函数能够以前所未有的保真度得到解析。通常情况下,我们并不预先知道存在哪些确切的尖锐特征,而且由于解析延续问题的ill-posed性质,多种光谱表示可能是可以接受的。在这项工作中,我们借鉴了机器学习和统计学文献,采用交叉验证技术,提供了一种无偏的方法来识别最可能的频谱。我们展示了使用 QMC 模拟生成的虚时间数据和人工光谱生成的合成数据的示例。我们的程序可被视为一种 "模型选择 "形式,可应用于各种数值分析连续方法,而不仅仅是 SAC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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