Location-based services (LBS) have been significantly developed and widely deployed in mobile devices. It is also well-known that LBS applications may result in severe privacy concerns by collecting sensitive locations. A strong privacy model ''local differential privacy'' (LDP) has been recently deployed in many different applications (e.g., Google RAPPOR, iOS, and Microsoft Telemetry) but not effective for LBS applications due to the low utility of existing LDP mechanisms. To address such deficiency, we propose the first LDP framework for a variety of location-based services (namely ''L-SRR''), which privately collects and analyzes user locations with high utility. Specifically, we design a novel randomization mechanism ''Staircase Randomized Response'' (SRR) and extend the empirical estimation to significantly boost the utility for SRR in different LBS applications (e.g., traffic density estimation, and k-nearest neighbors). We have conducted extensive experiments on four real LBS datasets by benchmarking with other LDP schemes in practical applications. The experimental results demonstrate that L-SRR significantly outperforms them.
翻译:基于位置的服务(LBS)已经得到显著开发,并被广泛用于移动设备,还众所周知,LBS应用可能会通过收集敏感地点而引起严重的隐私问题。最近在许多不同的应用(例如谷歌RAPPOR、iOS和微软遥测)中采用了强烈的隐私模式“地方差异隐私”(LDP ),但由于现有的LDP机制的利用率低,对LBS应用没有效果。为了解决这种缺陷,我们提议为各种基于位置的服务(即“L-SRR”)建立第一个LDP框架,这种服务可以私下收集和分析高用途用户地点。具体地说,我们设计了一个新型随机化机制“Staircase 随机化响应”(SRR),并扩展了实证估计,以大大增强不同LBS应用(例如交通密度估计和K-近邻)中SRR的效用。我们通过在实际应用中与其他LDP计划进行基准化,对四种真正的LBS数据集进行了广泛的试验。实验结果表明L-SRR明显超越了它们。