Trajectory-User Linking (TUL) is a relatively new mobility classification task in which anonymous trajectories are linked to the users who generated them. With applications ranging from personalized recommendations to criminal activity detection, TUL has received increasing attention over the past five years. While research has focused mainly on learning deep representations that capture complex spatio-temporal mobility patterns unique to individual users, we demonstrate that visit patterns are highly unique among users and thus simple heuristics applied directly to the raw data are sufficient to solve TUL. More specifically, we demonstrate that a single check-in per trajectory is enough to correctly predict the identity of the user up to 85% of the time. Moreover, by using a non-parametric classifier, we scale up TUL to over 100k users which is an increase over state-of-the-art by three orders of magnitude. Extensive empirical analysis on four real-world datasets (Brightkite, Foursquare, Gowalla and Weeplaces) compares our findings to state-of-the-art results, and more importantly validates our claim that TUL is easier than commonly believed.
翻译:轨迹-用户链接(TUL)是一个相对较新的流动性分类任务,其中匿名轨迹与生成轨迹的用户相连。在过去五年中,TUL受到越来越多的关注。虽然研究主要侧重于学习深度表达,捕捉个体用户特有的复杂的时空移动模式,但我们表明,访问模式在用户中非常独特,因此直接应用于原始数据的简单超自然现象足以解决TUL。更具体地说,我们证明,每个轨迹的单次检查足以正确预测用户身份,达到85%的时间。此外,通过使用非参数分类器,我们将TUL升级至100多个用户,这比目前水平高出3级。关于4个真实世界数据集(Brightkite, Foursquare, Gowalla和Weplace)的广泛经验分析将我们的调查结果与最新结果相比较,更重要的是,我们通过使用非参数分类器将TUL升级为超过100多个用户,这比目前水平高出3级。关于4个真实世界数据集(Brightkite, Foursquare, Gowla and Weeplace)比我们通常认为更容易。