DNN-based prediction model for spatio-temporal data

Junbo Zhang, Yu Zheng, Dekang Qi, Ruiyuan Li, Xiuwen Yi
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引用次数: 536

Abstract

Advances in location-acquisition and wireless communication technologies have led to wider availability of spatio-temporal (ST) data, which has unique spatial properties (i.e. geographical hierarchy and distance) and temporal properties (i.e. closeness, period and trend). In this paper, we propose a Deep-learning-based prediction model for Spatio-Temporal data (DeepST). We leverage ST domain knowledge to design the architecture of DeepST, which is comprised of two components: spatio-temporal and global. The spatio-temporal component employs the framework of convolutional neural networks to simultaneously model spatial near and distant dependencies, and temporal closeness, period and trend. The global component is used to capture global factors, such as day of the week, weekday or weekend. Using DeepST, we build a real-time crowd flow forecasting system called UrbanFlow1. Experiment results on diverse ST datasets verify DeepST's ability to capture ST data's spatio-temporal properties, showing the advantages of DeepST beyond four baseline methods.
基于dnn的时空数据预测模型
位置获取和无线通信技术的进步使时空数据的可得性更广,这些数据具有独特的空间特性(即地理层次和距离)和时间特性(即接近度、时期和趋势)。在本文中,我们提出了一种基于深度学习的时空数据预测模型(DeepST)。我们利用ST领域的知识来设计DeepST的架构,该架构由两个部分组成:时空和全球。时空组件采用卷积神经网络框架,同时模拟空间上的远近依赖关系、时间上的紧密性、周期和趋势。全局组件用于捕获全局因素,例如星期几、工作日或周末。利用DeepST,我们建立了一个实时人群流量预测系统UrbanFlow1。在不同ST数据集上的实验结果验证了DeepST捕获ST数据时空属性的能力,显示了DeepST在四种基线方法之外的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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