1. 复旦大学数据分析与安全实验室,上海 200438
2. 上海市数据科学重点实验室,上海 200438
[ "阮雯强(1999- ),男,复旦大学计算机科学技术学院博士生,主要研究方向为基于安全多方计算的隐私保护机器学习、差分隐私等" ]
[ "徐铭辛(1997- ),男,复旦大学软件学院硕士生,主要研究方向为基于安全多方计算的隐私保护机器学习、差分隐私等" ]
[ "涂新宇(1999- ),男,复旦大学软件学院硕士生,主要研究方向为基于安全多方计算的隐私保护机器学习、秘密共享等" ]
[ "宋鲁杉(1999- ),女,复旦大学计算机科学技术学院博士生,主要研究方向为基于安全多方计算的隐私保护、机器学习等" ]
[ "韩伟力(1975- ),男,博士,复旦大学计算机科学技术学院教授,主要研究方向为数据安全、访问控制" ]
网络首发:2022-09,
纸质出版:2022-09-15
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阮雯强, 徐铭辛, 涂新宇, 等. 数据租赁——数据流通的新方式[J]. 大数据, 2022,8(5):3-11.
Wenqiang RUAN, Mingxin XU, Xinyu TU, et al. Data tenancy: a new paradigm for data circulation[J]. Big data research, 2022, 8(5): 3-11.
阮雯强, 徐铭辛, 涂新宇, 等. 数据租赁——数据流通的新方式[J]. 大数据, 2022,8(5):3-11. DOI: 10.11959/j.issn.2096-0271.2022071.
Wenqiang RUAN, Mingxin XU, Xinyu TU, et al. Data tenancy: a new paradigm for data circulation[J]. Big data research, 2022, 8(5): 3-11. DOI: 10.11959/j.issn.2096-0271.2022071.
数据正成为推动社会发展的新生产要素。以合规的、可审计的方式使数据在多方之间流通对于数据价值的形成至关重要。从隐私保护以及数据利用的角度,提出了一种新的数据流通方式——数据租赁。首先介绍了提出数据租赁的动机,然后明确了数据租赁应当满足的5项需求,最后提出了一种基于秘密共享的数据租赁技术。
Data is becoming a new type of factor of production.How to compliantly and audibly circulate data among multiple parties is very important for data value formation.A novel data circulation paradigm
namely data tenancy
was proposed from the perspective of privacy preservation and data utilization.The motivation of data tenancy was discussed
and five requirements that data tenancy should satisfy were identified.Finally
a secret sharing-based data tenancy technique was proposed.
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