A semantic-preserving differentially private method for releasing query logs

作者:Sanchez David; Batet Montserrat; Viejo Alexandre; Rodriguez Garcia Mercedes; Castella Roca Jordi
来源:Information Sciences, 2018, 460: 223-237.
DOI:10.1016/j.ins.2018.05.046

摘要

Query logs are of great interest for data analysis. They allow characterizing user profiles, user behaviors and search habits. However, since query logs usually contain personal information, data controllers should implement appropriate data protection mechanisms before releasing them for secondary use. In the past, the anonymization of query logs was tackled from the perspective of statistical disclosure control and by relying on privacy models such as k-anonymity, which do not scale well with the high dimensionality and dynamicity of query logs. To offer better privacy protection, some authors have recently embraced the robust privacy guarantees of epsilon-differential privacy. However, this comes at the cost of limiting the number and types of analyses that can be made on the protected queries. To tackle this issue, in this paper we propose a privacy protection method for query logs that joins the flexibility and convenience of privacy-preserving data releases with the strong privacy guarantees of epsilon-differential privacy. Moreover, to retain the analytical utility of the protected query, we have put special care in capturing, managing and preserving the semantics of the queries during the protection process. The empirical experiments we report show that our method produces differentially private query logs that are more useful for analysis than related works.

  • 出版日期2018-9
  • 单位UNESCO