情境感知移动众包系统中的隐私

Thivya Kandappu, Archan Misra, Shih-Fen Cheng, H. Lau
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引用次数: 5

摘要

通过有效地协调智能手机用户,移动众包可以成为执行时间敏感的城市任务(如市政监控和最后一英里物流)的一种策略。移动众包平台的成功主要取决于它在吸引众包工作者方面的有效性,最近的研究表明,与依赖众包工作者浏览和承诺他们想要执行的任务的基于拉动的方法相比,基于推送的方法可以考虑到工人的日常工作,并产生高效的建议。因此,工人们在弯路上浪费的时间更少,提前计划得更多,需要做的计划工作也更少。然而,基于推送的系统并非没有缺点。主要的担忧是,将个人的移动轨迹泄露给众包平台可能会导致潜在的隐私侵犯。在本文中,我们首先展示了在这种基于推送的众包平台中持续共享用户位置的具体威胁。然后,我们提出了一种简单而有效的位置扰动技术,该技术模糊了某些用户的位置,以实现隐私保证,同时不影响系统生成的推荐质量。我们使用从我们的城市校园获得的移动跟踪数据来显示隐私保证和与提议的解决方案相关的推荐质量之间的权衡。我们表明,即使混淆75%的个人轨迹,也会影响用户再多绕1.8分钟的路,同时获得62.5%的位置痕迹不确定性。
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Privacy in context-aware mobile crowdsourcing systems
Mobile crowd-sourcing can become as a strategy to perform time-sensitive urban tasks (such as municipal monitoring and last mile logistics) by effectively coordinating smartphone users. The success of the mobile crowd-sourcing platform depends mainly on its effectiveness in engaging crowd-workers, and recent studies have shown that compared to the pull-based approach, which relies on crowd-workers to browse and commit to tasks they would want to perform, the push-based approach can take into consideration of worker's daily routine, and generate highly effective recommendations. As a result, workers waste less time on detours, plan more in advance, and require much less planning effort. However, the push-based systems are not without drawbacks. The major concern is the potential privacy invasion that could result from the disclosure of individual's mobility traces to the crowd-sourcing platform. In this paper, we first demonstrate specific threats of continuous sharing of users locations in such push-based crowd-sourcing platforms. We then propose a simple yet effective location perturbation technique that obfuscates certain user locations to achieve privacy guarantees while not affecting the quality of the recommendations the system generates.We use the mobility traces data we obtained from our urban campus to show the trade-offs between privacy guarantees and the quality of the recommendations associated with the proposed solution. We show that obfuscating even 75% of the individual trajectories will affect the user to make another extra 1.8 minutes of detour while gaining 62.5% more uncertainty of his location traces.
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