Privacy-Preserving Multi-Keyword Ranked Search over Encrypted Cloud Data

IEEE Transactions on Parallel and Distributed Systems(2014)

引用 2261|浏览419
暂无评分
摘要
With the advent of cloud computing, data owners are motivated to outsource their complex data management systems from local sites to the commercial public cloud for great flexibility and economic savings. But for protecting data privacy, sensitive data have to be encrypted before outsourcing, which obsoletes traditional data utilization based on plaintext keyword search. Thus, enabling an encrypted cloud data search service is of paramount importance. Considering the large number of data users and documents in the cloud, it is necessary to allow multiple keywords in the search request and return documents in the order of their relevance to these keywords. Related works on searchable encryption focus on single keyword search or Boolean keyword search, and rarely sort the search results. In this paper, for the first time, we define and solve the challenging problem of privacy-preserving multi-keyword ranked search over encrypted data in cloud computing (MRSE). We establish a set of strict privacy requirements for such a secure cloud data utilization system. Among various multi-keyword semantics, we choose the efficient similarity measure of "coordinate matching," i.e., as many matches as possible, to capture the relevance of data documents to the search query. We further use "inner product similarity" to quantitatively evaluate such similarity measure. We first propose a basic idea for the MRSE based on secure inner product computation, and then give two significantly improved MRSE schemes to achieve various stringent privacy requirements in two different threat models. To improve search experience of the data search service, we further extend these two schemes to support more search semantics. Thorough analysis investigating privacy and efficiency guarantees of proposed schemes is given. Experiments on the real-world data set further show proposed schemes indeed introduce low overhead on computation and communication.
更多
查看译文
关键词
commercial public cloud,data owner,data management systems,keyword search,privacy-preserving multikeyword ranked search,privacy requirements,plaintext keyword search,data privacy,data user,cryptography,ranked search,encrypted data,real-world data,data document,encrypted cloud data search,information retrieval,boolean keyword search,multikeyword semantics,cloud computing,encrypted cloud data,data utilization,complex data management system,data search service,coordinate matching measure,inner product similarity,privacy-preserving multi-keyword ranked search,single keyword search,similarity measure,data owners,cloud data utilization system,privacy-preserving,searchable encryption,indexes,servers,privacy,inner product,encryption,indexation,complex data,management system
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要