Trajectory data has the potential to greatly benefit a wide-range of real-world applications, such as tracking the spread of the disease through people's movement patterns and providing personalized location-based services based on travel preference. However, privay concerns and data protection regulations have limited the extent to which this data is shared and utilized. To overcome this challenge, local differential privacy provides a solution by allowing people to share a perturbed version of their data, ensuring privacy as only the data owners have access to the original information. Despite its potential, existing point-based perturbation mechanisms are not suitable for real-world scenarios due to poor utility, dependence on external knowledge, high computational overhead, and vulnerability to attacks. To address these limitations, we introduce LDPTrace, a novel locally differentially private trajectory synthesis framework. Our framework takes into account three crucial patterns inferred from users' trajectories in the local setting, allowing us to synthesize trajectories that closely resemble real ones with minimal computational cost. Additionally, we present a new method for selecting a proper grid granularity without compromising privacy. Our extensive experiments using real-world data, various utility metrics and attacks, demonstrate the efficacy and efficiency of LDPTrace.
翻译:为了克服这一挑战,地方差异隐私权提供了一种解决办法,允许人们分享其数据受扰动的版本,确保隐私,因为只有数据拥有者才能获得原始信息。尽管存在这种可能性,但现有的点基扰动机制不适合现实世界情景,因为其用途差、依赖外部知识、高计算间接费用和易受攻击。为了克服这些限制,我们引入了LDPTrace,这是一个全新的本地差异私人轨迹合成框架。我们的框架考虑到从本地环境中用户轨迹中推断出的三个关键模式,使我们能够以最低的计算成本合成与真实数据非常相似的轨迹。此外,我们提出了在不损害隐私的情况下选择适当网格颗粒的新方法。我们使用现实世界数据、各种通用度攻击和通用度攻击等广泛实验,展示了实际世界效率、各种通用度攻击和实用性LD的效能。