We revisit the Pseudo-Bayesian approach to the problem of estimating density matrix in quantum state tomography in this paper. Pseudo-Bayesian inference has been shown to offer a powerful paradign for quantum tomography with attractive theoretical and empirical results. However, the computation of (Pseudo-)Bayesian estimators, due to sampling from complex and high-dimensional distribution, pose significant challenges that hampers their usages in practical settings. To overcome this problem, we present an efficient adaptive MCMC sampling method for the Pseudo-Bayesian estimator. We show in simulations that our approach is substantially faster than the previous implementation by at least two orders of magnitude which is significant for practical quantum tomography.
翻译:在本文中,我们重新审视了用量子状态摄影估计密度矩阵问题的Pseudo-Bayesian方法。Pseudo-Bayesian推论已证明为量子摄影提供了强大的参数,具有有吸引力的理论和经验结果。然而,(Pseudo--)Bayesian测算器的计算,由于从复杂和高维分布中取样,对在实际环境中的使用构成重大挑战。为了克服这一问题,我们为Pseudo-Bayesian测地师提出了一个高效的适应性MCMC采样方法。我们在模拟中显示,我们的方法比以前的执行速度要快得多,至少有两个数量级,对于实际的量子摄影来说是十分重要的。