Estimation and uncertainty quantification for the output from quantum simulators

IF 1.7 Q2 MATHEMATICS, APPLIED Foundations of data science (Springfield, Mo.) Pub Date : 2019-03-07 DOI:10.3934/FODS.2019007
R. Bennink, A. Jasra, K. Law, P. Lougovski
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引用次数: 2

Abstract

The problem of estimating certain distributions over {0, 1}d is considered here. The distribution represents a quantum system of d qubits, where there are non-trivial dependencies between the qubits. A maximum entropy approach is adopted to reconstruct the distribution from exact moments or observed empirical moments. The Robbins Monro algorithm is used to solve the intractable maximum entropy problem, by constructing an unbiased estimator of the un-normalized target with a sequential Monte Carlo sampler at each iteration. In the case of empirical moments, this coincides with a maximum likelihood estimator. A Bayesian formulation is also considered in order to quantify uncertainty a posteriori. Several approaches are proposed in order to tackle this challenging problem, based on recently developed methodologies. In particular, unbiased estimators of the gradient of the log posterior are constructed and used within a provably convergent Langevin-based Markov chain Monte Carlo method. The methods are illustrated on classically simulated output from quantum simulators.
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量子模拟器输出的估计与不确定性量化
这里考虑了在{0,1}d上估计某些分布的问题。该分布表示d个量子位的量子系统,其中量子位之间存在非平凡的依赖关系。采用最大熵方法从精确矩或观测到的经验矩重建分布。Robbins-Monro算法用于解决棘手的最大熵问题,方法是在每次迭代时用顺序蒙特卡罗采样器构造未归一化目标的无偏估计器。在经验矩的情况下,这与最大似然估计器一致。为了对不确定性进行后验量化,还考虑了贝叶斯公式。根据最近开发的方法,提出了几种方法来解决这一具有挑战性的问题。特别地,在可证明收敛的基于Langevin的马尔可夫链蒙特卡罗方法中,构造并使用对数后验梯度的无偏估计量。这些方法在量子模拟器的经典模拟输出上进行了说明。
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