通过深度学习揭示准分布表征的非经典性

IF 5.6 2区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY Quantum Science and Technology Pub Date : 2024-11-15 DOI:10.1088/2058-9565/ad8ef0
Hong-Bin Chen, Cheng-Hua Liu, Kuan-Lun Lai, Bor-Yann Tseng, Ping-Yuan Lo, Yueh-Nan Chen and Chi-Hua Yu
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引用次数: 0

摘要

为了明确区分真正的量子性和经典性,一种被广泛采用的方法是将准分布表示的负值作为非经典性的有力证据。著名的例子包括以典型汉密尔顿集合表示(CHER)为特征的动态过程非经典性,以及以维格纳函数为特征的量子态非经典性。然而,从实验数据中构建具有负值的多元联合准分布函数通常非常麻烦。在这里,我们提出了一种利用深度生成模型的计算方法,通过处理三个边值来构建双变量联合准分布函数。我们首先应用我们的模型来解决 CHERs 这一具有挑战性的问题,因为该问题缺乏通用的解决方案,导致该问题缺乏地面实况(GT)。为了克服 CHER 问题的地面实况缺陷,我们设计了最佳合成数据集来训练我们的模型。在使用合成数据进行训练的同时,物理信息优化使我们的模型能够捕捉到热波动对非经典性的不利影响,而这种影响无法从任何分析解中获得。这凸显了我们方法的可靠性。这种方法还允许我们预测受热噪声影响的维格纳函数。我们的模型通过处理概率分布的三个边际值来预测维格纳函数,其精确度非常高。我们的方法还大大减少了构建量子态 Wigner 函数的实验工作量,为实现量子态层析成像提供了一种高效的替代方法。
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Unveiling the nonclassicality within quasi-distribution representations through deep learning
To unequivocally distinguish genuine quantumness from classicality, a widely adopted approach focuses on the negative values of a quasi-distribution representation as compelling evidence of nonclassicality. Prominent examples include the dynamical process nonclassicality characterized by the canonical Hamiltonian ensemble representation (CHER) and the nonclassicality of quantum states characterized by the Wigner function. However, to construct a multivariate joint quasi-distribution function with negative values from experimental data is typically highly cumbersome. Here we propose a computational approach utilizing a deep generative model, processing three marginals, to construct the bivariate joint quasi-distribution functions. We first apply our model to tackle the challenging problem of the CHERs, which lacks universal solutions, rendering the problem ground-truth (GT) deficient. To overcome the GT deficiency of the CHER problem, we design optimal synthetic datasets to train our model. While trained with synthetic data, the physics-informed optimization enables our model to capture the detrimental effect of the thermal fluctuations on nonclassicality, which cannot be obtained from any analytical solutions. This underscores the reliability of our approach. This approach also allows us to predict the Wigner functions subject to thermal noises. Our model predicts the Wigner functions with a prominent accuracy by processing three marginals of probability distributions. Our approach also provides a significant reduction of the experimental efforts of constructing the Wigner functions of quantum states, giving rise to an efficient alternative way to realize the quantum state tomography.
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来源期刊
Quantum Science and Technology
Quantum Science and Technology Materials Science-Materials Science (miscellaneous)
CiteScore
11.20
自引率
3.00%
发文量
133
期刊介绍: Driven by advances in technology and experimental capability, the last decade has seen the emergence of quantum technology: a new praxis for controlling the quantum world. It is now possible to engineer complex, multi-component systems that merge the once distinct fields of quantum optics and condensed matter physics. Quantum Science and Technology is a new multidisciplinary, electronic-only journal, devoted to publishing research of the highest quality and impact covering theoretical and experimental advances in the fundamental science and application of all quantum-enabled technologies.
期刊最新文献
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