| Literature DB >> 29956972 |
Jun Gao1,2, Lu-Feng Qiao1,2, Zhi-Qiang Jiao1,2, Yue-Chi Ma3,4, Cheng-Qiu Hu1,2, Ruo-Jing Ren1,2, Ai-Lin Yang1,2, Hao Tang1,2, Man-Hong Yung4,5, Xian-Min Jin1,2.
Abstract
Quantum information technologies provide promising applications in communication and computation, while machine learning has become a powerful technique for extracting meaningful structures in "big data." A crossover between quantum information and machine learning represents a new interdisciplinary area stimulating progress in both fields. Traditionally, a quantum state is characterized by quantum-state tomography, which is a resource-consuming process when scaled up. Here we experimentally demonstrate a machine-learning approach to construct a quantum-state classifier for identifying the separability of quantum states. We show that it is possible to experimentally train an artificial neural network to efficiently learn and classify quantum states, without the need of obtaining the full information of the states. We also show how adding a hidden layer of neurons to the neural network can significantly boost the performance of the state classifier. These results shed new light on how classification of quantum states can be achieved with limited resources, and represent a step towards machine-learning-based applications in quantum information processing.Year: 2018 PMID: 29956972 DOI: 10.1103/PhysRevLett.120.240501
Source DB: PubMed Journal: Phys Rev Lett ISSN: 0031-9007 Impact factor: 9.161