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Rank-based model selection for multiple ions quantum tomography

机译:基于秩的多离子量子层析成像模型选择

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摘要

The statistical analysis of measurement data has become a key component of many quantum engineering experiments. As standard full state tomography becomes unfeasible for large dimensional quantum systems, one needs to exploit prior information and the 'sparsity' properties of the experimental state in order to reduce the dimensionality of the estimation problem. In this paper we propose model selection as a general principle for finding the simplest, or most parsimonious explanation of the data, by fitting different models and choosing the estimator with the best trade-off between likelihood fit and model complexity. We apply two well established model selection methods—the Akaike information criterion (AIC) and the Bayesian information criterion (BIC)—two models consisting of states of fixed rank and datasets such as are currently produced in multiple ions experiments. We test the performance of AIC and BIC on randomly chosen low rank states of four ions, and study the dependence of the selected rank with the number of measurement repetitions for one ion states. We then apply the methods to real data from a four ions experiment aimed at creating a Smolin state of rank 4. By applying the two methods together with the Pearson χ2 test we conclude that the data can be suitably described with a model whose rank is between 7 and 9. Additionally we find that the mean square error of the maximum likelihood estimator for pure states is close to that of the optimal over all possible measurements.
机译:测量数据的统计分析已成为许多量子工程实验的关键组成部分。随着标准的全状态层析成像对于大尺寸量子系统变得不可行,人们需要利用先验信息和实验状态的“稀疏”性质来减少估计问题的维数。在本文中,我们通过选择不同的模型并选择在似然拟合和模型复杂度之间取得最佳折衷的估计量,将模型选择作为寻找数据最简单或最简约的解释的一般原则。我们应用了两种完善的模型选择方法-Akaike信息标准(AIC)和贝叶斯信息标准(BIC)-这两种模型由固定秩的状态和数据集组成,例如当前在多个离子实验中生成的数据集。我们测试了随机选择的四种离子的低秩状态下AIC和BIC的性能,并研究了所选秩与一个离子态的测量重复次数的相关性。然后,我们将这些方法应用于来自旨在创建Smolin等级为4的四离子实验的真实数据。通过将这两种方法与Pearsonχ2检验一起使用,我们得出结论,可以使用等级介于2和3之间的模型适当描述数据参见图7和9。此外,我们发现,在所有可能的测量中,纯态的最大似然估计器的均方误差接近于最佳均方误差。

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