Crowd flow forecasting, which aims to predict the crowds entering or leaving certain regions, is a fundamental task in smart cities. One of the key properties of crowd flow data is periodicity: a pattern that occurs at regular time intervals, such as a weekly pattern. To capture such periodicity, existing studies either fuse the periodic hidden states into channels for networks to learn or apply extra periodic strategies to the network architecture. In this paper, we devise a novel periodic residual learning network (PRNet) for a better modeling of periodicity in crowd flow data. Unlike existing methods, PRNet frames the crowd flow forecasting as a periodic residual learning problem by modeling the variation between the inputs (the previous time period) and the outputs (the future time period). Compared to directly predicting crowd flows that are highly dynamic, learning more stationary deviation is much easier, which thus facilitates the model training. Besides, the learned variation enables the network to produce the residual between future conditions and its corresponding weekly observations at each time interval, and therefore contributes to substantially more accurate multi-step ahead predictions. Extensive experiments show that PRNet can be easily integrated into existing models to enhance their predictive performance.
翻译:人群流动预测旨在预测进入或离开某些地区的人群,是智能城市的一项基本任务。人群流动数据的关键特性之一是周期性:一种定期周期性模式,如每周模式。为了捕捉这种周期性,现有的研究要么将定期隐藏状态整合到网络的渠道,以便网络学习,要么对网络架构采用额外的定期战略。在本文件中,我们设计了一个新型的定期剩余学习网络(PRNet),以便更好地模拟人群流动数据的周期性模型。与现有方法不同,PRNet将人群流动预测作为定期剩余学习问题,通过模拟投入(上一个时间段)与产出(未来时间段)之间的差异。 与直接预测高度动态的人群流动相比,学习更固定的偏差容易得多,从而有利于模式培训。 此外,学习的变异使得网络能够在未来条件和每时段的相应每周观测之间产生剩余,因此有助于大大准确的多步预测。广泛的实验表明,PRNet可以很容易纳入现有的模型,以提高其预测性能。