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A framework for privacy preserving statistical analysis on distributed databases

机译:分布式数据库的隐私保护统计分析框架

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Alice and Bob are mutually untrusting curators who possess separate databases containing information about a set of respondents. This data is to be sanitized and published to enable accurate statistical analysis, while retaining the privacy of the individual respondents in the databases. Further, an adversary who looks at the published data must not even be able to compute statistical measures on it. Only an authorized researcher should be able to compute marginal and joint statistics. This work is an attempt toward providing a theoretical formulation of privacy and utility for problems of this type. Privacy of the individual respondents is formulated using є-differential privacy. Privacy of the marginal and joint statistics on the distributed databases is formulated using a new model called δ-distributional є-differential privacy. Finally, a constructive scheme based on randomized response is presented as an example mechanism that satisfies the formulated privacy requirements.
机译:爱丽丝(Alice)和鲍勃(Bob)是互不信任的策展人,他们拥有单独的数据库,其中包含有关一组受访者的信息。应对这些数据进行清理和发布,以进行准确的统计分析,同时保留数据库中各个受访者的隐私。此外,查看已发布数据的对手甚至不能甚至无法计算统计数据。只有授权的研究人员才能计算出边际统计和联合统计。这项工作是试图为此类问题提供隐私和实用性的理论表述。个别受访者的隐私是使用є差异隐私制定的。分布式数据库上的边际统计和联合统计的隐私是使用称为δ-分布є-差分隐私的新模型制定的。最后,提出了一种基于随机响应的建设性方案,作为满足已制定隐私要求的示例机制。

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