论文标题
量子问题的机器学习
Machine Learning for Quantum Matter
论文作者
论文摘要
量子物质,研究阶段的研究阶段,其特性是本质上是量子力学的,它来自像硬凝结物理学,材料科学,统计力学,量子信息,量子重力和大规模数值模拟的区域。最近,研究人员感兴趣的量子问题和密切相关的量子系统已将注意力转移到现代机器学习的基础算法上,以期在其领域取得进展。在这里,我们对机器学习想法的最新发展和适应量子问题的研究进行了简短的审查,包括从合成数据中识别传统和拓扑状态的算法,从识别物质和拓扑状态的实验数据,到在神经网络及其应用方面的量子状态的表示,到其应用程序到量化系统的模拟和量化系统的模拟和控制。我们讨论机器学习与量子多体物理学之间交集的未来发展的前景。
Quantum matter, the research field studying phases of matter whose properties are intrinsically quantum mechanical, draws from areas as diverse as hard condensed matter physics, materials science, statistical mechanics, quantum information, quantum gravity, and large-scale numerical simulations. Recently, researchers interested quantum matter and strongly correlated quantum systems have turned their attention to the algorithms underlying modern machine learning with an eye on making progress in their fields. Here we provide a short review on the recent development and adaptation of machine learning ideas for the purpose advancing research in quantum matter, including ideas ranging from algorithms that recognize conventional and topological states of matter in synthetic an experimental data, to representations of quantum states in terms of neural networks and their applications to the simulation and control of quantum systems. We discuss the outlook for future developments in areas at the intersection between machine learning and quantum many-body physics.