CSpace
Entanglement structure detection via machine learning
Chen, Changbo1; Ren, Changliang2,3,4; Lin, Hongqing4; Lu, He5
2021-07-01
摘要Detecting the entanglement structure, such as intactness and depth, of an n-qubit state is important for understanding the imperfectness of the state preparation in experiments. However, identifying such structure usually requires an exponential number of local measurements. In this letter, we propose an efficient machine learning based approach for predicting the entanglement intactness and depth simultaneously. The generalization ability of this classifier has been convincingly proved, as it can precisely distinguish the whole range of pure generalized Greenberger-Horne-Zeilinger (GHZ) states which never exist in the training process. In particular, the learned classifier can discover the entanglement intactness and depth bounds for the noised GHZ state, for which the exact bounds are only partially known.
关键词entanglement structure machine learning multipartite entanglement correct predictions
DOI10.1088/2058-9565/ac0a3e
发表期刊QUANTUM SCIENCE AND TECHNOLOGY
ISSN2058-9565
卷号6期号:3页码:8
通讯作者Ren, Changliang(renchangliang@hunnu.edu.cn)
收录类别SCI
WOS记录号WOS:000684705300001
语种英语