Privacy-Preserving Approximate k-Nearest-Neighbors Search that Hides Access, Query and Volume Patterns

A. Boldyreva, Tianxin Tang
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引用次数: 6

Abstract

Abstract We study the problem of privacy-preserving approximate kNN search in an outsourced environment — the client sends the encrypted data to an untrusted server and later can perform secure approximate kNN search and updates. We design a security model and propose a generic construction based on locality-sensitive hashing, symmetric encryption, and an oblivious map. The construction provides very strong security guarantees, not only hiding the information about the data, but also the access, query, and volume patterns. We implement, evaluate efficiency, and compare the performance of two concrete schemes based on an oblivious AVL tree and an oblivious BSkiplist.
隐藏访问、查询和容量模式的保护隐私的近似k近邻搜索
摘要我们研究了在外包环境中保护隐私的近似kNN搜索问题——客户端将加密数据发送到不可信的服务器,然后可以执行安全的近似kNN搜索和更新。我们设计了一个安全模型,并提出了一个基于位置敏感哈希、对称加密和遗忘映射的通用结构。该结构提供了非常强大的安全保障,不仅隐藏了有关数据的信息,还隐藏了访问、查询和卷模式。我们实现、评估了两种基于遗忘AVL树和遗忘BSkiplist的具体方案的效率,并对其性能进行了比较。
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