The Spatio-Temporal Crowd Flow Prediction (STCFP) problem is a classical problem with plenty of prior research efforts that benefit from traditional statistical learning and recent deep learning approaches. While STCFP can refer to many real-world problems, most existing studies focus on quite specific applications, such as the prediction of taxi demand, ridesharing order, and so on. This hinders the STCFP research as the approaches designed for different applications are hardly comparable, and thus how an applicationdriven approach can be generalized to other scenarios is unclear. To fill in this gap, this paper makes two efforts: (i) we propose an analytic framework, called STAnalytic, to qualitatively investigate STCFP approaches regarding their design considerations on various spatial and temporal factors, aiming to make different application-driven approaches comparable; (ii) we construct an extensively large-scale STCFP benchmark datasets with four different scenarios (including ridesharing, bikesharing, metro, and electrical vehicle charging) with up to hundreds of millions of flow records, to quantitatively measure the generalizability of STCFP approaches. Furthermore, to elaborate the effectiveness of STAnalytic in helping design generalizable STCFP approaches, we propose a spatio-temporal meta-model, called STMeta, by integrating generalizable temporal and spatial knowledge identified by STAnalytic. We implement three variants of STMeta with different deep learning techniques. With the datasets, we demonstrate that STMeta variants can outperform state-of-the-art STCFP approaches by 5%.
翻译:Spatio-Temporal Crowd Flow 预测(STCFP)问题是一个古老的问题,因为许多先前的研究工作都得益于传统的统计学习和最近的深层次学习方法。虽然STCFP可以提及许多现实世界的问题,但大多数现有研究都侧重于相当具体的应用,例如出租车需求的预测、搭车共享秩序等。这阻碍了STCFP的研究,因为为不同应用设计的方法几乎无法比较,因此应用驱动方法如何能够推广到其他情况还不清楚。为了填补这一空白,本文件作出了两项努力:(一) 我们提议了一个分析框架,称为STAAlytial,从质量上调查STCFP关于各种空间和时间因素设计考虑的方法,目的是使不同的应用驱动方法具有可比性;(二) 我们建造了一个规模广泛的STCFP基准数据集,有四种不同的假设(包括搭车、自行车共享、中流数据共享、中电车收费等),有多达数以百万计的流量记录,可以量化STCFP方法的通用性。此外,我们提议了SA-Starial-stal-stal-deal-deal-stal-deal-deal-stal-deal-deal-Staphal-deal-deal-Staphal-Staildal-Staphal-Sta-Sal-Sta-Sal-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sal-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sal-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sal-Sal-S-S-S-S-S-S-S-S-S-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sta-Sal-Sta-Sta-Sta-Sal-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S-S