作者
Ninghui Li, Wahbeh Qardaji, Dong Su
发表日期
2012/5/2
图书
Proceedings of the 7th ACM Symposium on Information, Computer and Communications Security
页码范围
32-33
简介
This paper aims at answering the following two questions in privacy-preserving data analysis and publishing. The first is: What formal privacy guarantee (if any) does k-anonymization methods provide? k-Anonymization methods have been studied extensively in the database community, but have been known to lack strong privacy guarantees. The second question is: How can we benefit from the adversary's uncertainty about the data? More specifically, can we come up a meaningful relaxation of differential privacy [2, 3] by exploiting the adversary's uncertainty about the dataset? We now discuss these two motivations in more detail.
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