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Privacy in Data Service Composition

机译:数据服务组成的隐私

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摘要

In modern information systems different information features, about the same individual, are often collected and managed by autonomous data collection services that may have different privacy policies. Answering many end-users' legitimate queries requires the integration of data from multiple such services. However, data integration is often hindered by the lack of a trusted entity, often called a mediator, with which the services can share their data and delegate the enforcement of their privacy policies. In this article, we propose a flexible privacy-preserving data integration approach for answering data integration queries without the need for a trusted mediator. In our approach, services are allowed to enforce their privacy policies locally. The mediator is considered to be untrusted, and only has access to encrypted information to allow it to link data subjects across the different services. Services, by virtue of a new privacy requirement, dubbed k-Protection, limiting privacy leaks, cannot infer information about the data held by each other. End-users, in turn, have access to privacy-sanitized data only. We evaluated our approach using an example and a real dataset from the healthcare application domain. The results are promising from both the privacy preservation and the performance perspectives.
机译:在现代信息系统中,经常由可能具有不同隐私政策的自主数据收集服务来收集和管理的不同信息特征。回答许多最终用户的合法查询需要从多个此类服务中集成数据。但是,数据集成通常因缺乏可信赖的实体而受阻,通常称为调解员,服务可以共享其数据并委派其隐私政策的执行。在本文中,我们提出了一种灵活的隐私保留数据集成方法,用于应答数据集成查询而无需可信介体。在我们的方法中,允许服务在本地执行其隐私政策。调解员被认为是不受信任的,并且只能访问加密信息,以允许其链接跨不同服务的数据受试者。凭借新的隐私要求,服务,将被称为K-Protection,限制隐私泄漏,不能推断有关彼此所持的数据的信息。最终用户又可以访问隐私消毒数据。我们使用HealthCare应用程序域中的示例和实时数据集进行评估我们的方法。结果既有隐私保存的承诺和绩效观点。

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