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Protecting data against unwanted inferences

机译:保护数据免受不必要的推论

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We study the competing goals of utility and privacy as they arise when a provider delegates the processing of its personal information to a recipient who is better able to handle this data. We formulate our goals in terms of the inferences which can be drawn using the shared data. A whitelist describes the inferences that are desirable, i.e., providing utility. A blacklist describes the unwanted inferences which the provider wants to keep private. We formally define utility and privacy parameters using elementary information-theoretic notions and derive a bound on the region spanned by these parameters. We provide constructive schemes for achieving certain boundary points of this region. Finally, we improve the region by sharing data over aggregated time slots.
机译:我们在提供者将其个人信息处理到更好能够处理此数据的收件人时,我们出现了效用和隐私的竞争目标。我们在可以使用共享数据绘制的推论方面制定我们的目标。白名单描述了所需的推论,即提供效用。黑名单描述了提供者想要保密的不需要的推断。我们使用基本信息 - 理论概念正式定义实用程序和隐私参数,并导出这些参数跨越的区域的绑定。我们为实现该地区某些边界点提供建设性方案。最后,我们通过在聚合时隙上共享数据来改进该区域。

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