Unlinkable Updatable Hiding Databases and Privacy-Preserving Loyalty Programs

Aditya Damodaran, A. Rial
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引用次数: 1

Abstract

Abstract Loyalty programs allow vendors to profile buyers based on their purchase histories, which can reveal privacy sensitive information. Existing privacy-friendly loyalty programs force buyers to choose whether their purchases are linkable. Moreover, vendors receive more purchase data than required for the sake of profiling. We propose a privacy-preserving loyalty program where purchases are always unlinkable, yet a vendor can profile a buyer based on her purchase history, which remains hidden from the vendor. Our protocol is based on a new building block, an unlinkable updatable hiding database (HD), which we define and construct. HD allows the vendor to initialize and update databases stored by buyers that contain their purchase histories and their accumulated loyalty points. Updates are unlinkable and, at each update, the database is hidden from the vendor. Buyers can neither modify the database nor use old versions of it. Our construction for HD is practical for large databases.
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不可链接的可更新隐藏数据库和隐私保护忠诚度计划
忠诚度计划允许供应商根据买家的购买历史对其进行分析,这可能会泄露隐私敏感信息。现有的隐私友好型忠诚计划迫使买家选择他们的购买是否可链接。此外,供应商收到的购买数据比分析所需的要多。我们提出了一个保护隐私的忠诚计划,其中购买总是不可链接的,但供应商可以根据买家的购买历史对其进行分析,这对供应商来说是隐藏的。我们的协议是基于一个新的构建块,一个不可链接的可更新隐藏数据库(HD),我们定义和构建。HD允许供应商初始化和更新由买家存储的数据库,其中包含他们的购买历史和累积的忠诚度积分。更新是不可链接的,并且在每次更新时,数据库对供应商是隐藏的。买家既不能修改数据库,也不能使用旧版本。我们的HD构造对于大型数据库是实用的。
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