经典机器学习问题中量子数据的有效表示

I. Savvas, Andrey Chernov, O. Kartashov, G. Beliavsky, M. Butakova
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摘要

毫无疑问,量子计算在包括科学研究在内的许多领域开辟了新的视野和视角。随着科技和量子计算机的进步,我们现在可以进行新的科学实验:观察单个系统、原子、电子和光子的量子特性,并影响和控制量子系统。量子力学通过量子态来描述量子系统的性质。与经典力学不同,量子态本身不能在实验中直接观察到,因此多体动力学的数学模拟是有用的。尽管多体动力学问题可以在有限的情况下解决,但是当我们考虑现实世界的物质碎片时,这将导致超出经典数字计算机的计算密集型计算。描述多体系统的量子态所需的内存和时间随系统的大小呈指数级增长。这使得物理界将注意力集中在现代机器学习的算法上,目标是在量子物质研究方面取得进展。因此,机器学习的成功应用需要有效和信息丰富的数据表示。本文讨论了将经典机器学习算法应用于多体模拟问题中与量子系统相关的测量所得的量子数据的一些新方面。本文研究并实验证明了一种适用于经典机器学习应用的基于量子经典阴影的量子数据表示方法。
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On the Effective Representation of Quantum Data for Classical Machine Learning Problems
There is no doubt that quantum computing has opened up new horizons and perspectives in many fields, including scientific research. With the advancement of technology and quantum computers, we can now conduct new kinds of scientific experiments: observing quantum properties of individual systems, atoms, electrons and photons as well as influencing and controlling quantum systems. Quantum mechanics describes the properties of quantum systems by their quantum states. Unlike in classical mechanics, quantum states themselves cannot be directly observed in experiments, so many-body dynamics mathematical simulations are useful. Even though many-body dynamics problems can be solved for limited cases, but when we consider real-world pieces of matter this leads to computation-intensive calculations that are beyond classic digital computers. The memory and time needed to describe the quantum state of a many-body system scales exponentially with the size of the system. This has led physics communities to focus their attention on the algorithms underlying modern machine learning with the goal of making progress in quantum matter research. As a consequence, the successful application of machine learning requires effective and informative data representation. This paper discusses some novel aspects of applying classical machine learning algorithms to quantum data derived from measurements associated with quantum systems in many-body simulation problems. In this paper, we investigate and experimentally demonstrate one of the effective methods of the quantum data representation suited for the classical machine learning applications based on quantum classical shadows.
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