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首页> 外文期刊>IEEE transactions on mobile computing >Privacy-Preserving Crowd-Sourced Statistical Data Publishing with An Untrusted Server
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Privacy-Preserving Crowd-Sourced Statistical Data Publishing with An Untrusted Server

机译:使用不受信任的服务器保护隐私的人群源统计数据发布

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摘要

The continuous publication of aggregate statistics over crowd-sourced data to the public has enabled many data mining applications (e.g., real-time traffic analysis). Existing systems usually rely on a trusted server to aggregate the spatio-temporal crowd-sourced data and then apply differential privacy mechanism to perturb the aggregate statistics before publishing to provide strong privacy guarantee. However, the privacy of users will be exposed once the server is hacked or cannot be trusted. In this paper, we study the problem of real-time crowd-sourced statistical data publishing with strong privacy protection under an untrusted server. We propose a novel distributed agent-based privacy-preserving framework, called DADP, that introduces a new level of multiple agents between the users and the untrusted server. Instead of directly uploading the check-in information to the untrusted server, a user can randomly select one agent and upload the check-in information to it with the anonymous connection technology. Each agent aggregates the received crowd-sourced data and perturbs the aggregated statistics locally with Laplace mechanism. The perturbed statistics from all the agents are further combined together to form the entire perturbed statistics for publication. In particular, we propose a distributed budget allocation mechanism and an agent-based dynamic grouping mechanism to realize global w-event is an element of-differential privacy in a distributed way. We prove that DADP can provide w-event is an element of-differential privacy for real-time crowd-sourced statistical data publishing under the untrusted server. Extensive experiments on real-world datasets demonstrate the effectiveness of DADP.
机译:持续向公众发布有关众包数据的汇总统计信息,这使许多数据挖掘应用程序(例如实时流量分析)成为可能。现有系统通常依赖于受信任的服务器来聚合时空人群来源的数据,然后在发布之前应用差分隐私机制来干扰聚合统计信息,以提供强大的隐私保证。但是,一旦服务器被黑客入侵或无法信任,用户的隐私就会暴露出来。在本文中,我们研究了在不受信任的服务器下具有强大隐私保护的实时众包统计数据发布问题。我们提出了一种新颖的基于分布式代理的隐私保护框架,称为DADP,该框架在用户和不受信任的服务器之间引入了新级别的多个代理。用户可以直接选择一个代理,然后使用匿名连接技术将签到信息上载到该代理,而不必直接将签到信息上载到不受信任的服务器。每个代理会汇总收到的众包数据,并使用拉普拉斯机制在本地干扰汇总的统计信息。来自所有代理的扰动统计信息进一步组合在一起,以形成整个扰动统计信息以进行发布。特别地,我们提出了一种分布式预算分配机制和一种基于代理的动态分组机制,以实现全局w事件是分布式隐私差分元素。我们证明,DADP可以提供w-event是在不受信任的服务器下实时众包统计数据发布的差异隐私元素。在真实数据集上的大量实验证明了DADP的有效性。

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