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Distributed secure quantum machine learning 被引量:8

Distributed secure quantum machine learning
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摘要 Distributed secure quantum machine learning(DSQML) enables a classical client with little quantum technology to delegate a remote quantum machine learning to the quantum server with the privacy data preserved. Moreover, DSQML can be extended to a more general case that the client does not have enough data, and resorts both the remote quantum server and remote databases to perform the secure machine learning. Here we propose a DSQML protocol that the client can classify two-dimensional vectors to different clusters, resorting to a remote small-scale photon quantum computation processor. The protocol is secure without leaking any relevant information to the Eve. Any eavesdropper who attempts to intercept and disturb the learning process can be noticed. In principle, this protocol can be used to classify high dimensional vectors and may provide a new viewpoint and application for future ‘‘big data". Distributed secure quantum machine learning (DSQML) enables a classical client with little quantum technology to delegate a remote quantum machine learning to the quantum server with the privacy data preserved. Moreover, DSQML can be extended to a more general case that the client does not have enough data, and resorts both the remote quantum server and remote databases to perform the secure machi~ learning. Here we propose a DSQML protocol that the client can classify two-dimensional vectors to dif- ferent clusters, resorting to a remote small-scale photon quantum computation processor. The protocol is secure without leaking any relevant information to the Eve. Any eavesdropper who attempts to intercept and disturb the learning process can be noticed. In principle, this protocol can be used to classify high dimensional vectors and may provide a new viewpoint and application for future "big data".
出处 《Science Bulletin》 SCIE EI CAS CSCD 2017年第14期1025-1029,共5页 科学通报(英文版)
基金 supported by the National Natural Science Foundation of China(11474168 and 61401222) the Natural Science Foundation of Jiangsu Province(BK20151502) the Qing Lan Project in Jiangsu Province a Project Funded by the Priority Academic Program Development of Jiangsu Higher Education Institutions
关键词 量子计算 机器学习 分布式 安全 远程数据库 客户端 数据保存 二维矢量 Quantum machine learning Quantum communication Quantum computation Big data
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