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实现非马尔可夫随机模拟的量子维度约简。

Implementing quantum dimensionality reduction for non-Markovian stochastic simulation.

机构信息

CAS Key Laboratory of Quantum Information, University of Science and Technology of China, Hefei, 230026, People's Republic of China.

CAS Center For Excellence in Quantum Information and Quantum Physics, University of Science and Technology of China, Hefei, 230026, People's Republic of China.

出版信息

Nat Commun. 2023 May 6;14(1):2624. doi: 10.1038/s41467-023-37555-0.

Abstract

Complex systems are embedded in our everyday experience. Stochastic modelling enables us to understand and predict the behaviour of such systems, cementing its utility across the quantitative sciences. Accurate models of highly non-Markovian processes - where the future behaviour depends on events that happened far in the past - must track copious amounts of information about past observations, requiring high-dimensional memories. Quantum technologies can ameliorate this cost, allowing models of the same processes with lower memory dimension than corresponding classical models. Here we implement such memory-efficient quantum models for a family of non-Markovian processes using a photonic setup. We show that with a single qubit of memory our implemented quantum models can attain higher precision than possible with any classical model of the same memory dimension. This heralds a key step towards applying quantum technologies in complex systems modelling.

摘要

复杂系统存在于我们的日常经验中。随机建模使我们能够理解和预测这类系统的行为,从而巩固了它在整个定量科学中的实用性。对高度非马尔可夫过程(未来的行为取决于很久以前发生的事件)进行准确建模必须跟踪大量关于过去观测的信息,这需要高维记忆。量子技术可以改善这种成本,允许使用比相应的经典模型低记忆维度的相同过程的模型。在这里,我们使用光子设备为一系列非马尔可夫过程实现了这种具有内存效率的量子模型。我们表明,使用单个量子位的内存,我们实现的量子模型可以达到比任何具有相同内存维度的经典模型更高的精度。这标志着在复杂系统建模中应用量子技术的关键一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a62f/10164178/3e528b102829/41467_2023_37555_Fig1_HTML.jpg

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