论文标题

对道路交通预测的深入学习:这有区别吗?

Deep Learning for Road Traffic Forecasting: Does it Make a Difference?

论文作者

Manibardo, Eric L., Laña, Ibai, Del Ser, Javier

论文摘要

深度学习方法已被证明可以灵活地模拟复杂现象。智能运输系统(ITS)也是如此,其中多个领域(例如车辆感知和交通分析)已广泛接受深入学习作为核心建模技术。尤其是在短期流量预测中,深度学习能够提供良好结果的能力产生了一种普遍的惯性,可以使用深度学习模型,而无需深入研究其益处和弊端。本文着重于批判性地分析艺术的状态,指的是该研究领域的深度学习。为此,我们根据两个分类标准详细阐述了近年来对出版物的审查的发现。进行后批判分析以提出问题并引发有关对流量预测深度学习问题的必要辩论。这项研究以不同性质的流量数据集的不同短期流量预测方法的基准完成,旨在涵盖各种可能的情况。我们的实验表明,深度学习并不是每种情况的最佳建模技术,这揭示了迄今为止,社区应在前瞻性研究中应解决的一些警告。这些见解揭示了道路交通预测中的新挑战和研究机会,这些挑战和研究的列举和讨论是为了启发和指导该领域的未来研究工作。

Deep Learning methods have been proven to be flexible to model complex phenomena. This has also been the case of Intelligent Transportation Systems (ITS), in which several areas such as vehicular perception and traffic analysis have widely embraced Deep Learning as a core modeling technology. Particularly in short-term traffic forecasting, the capability of Deep Learning to deliver good results has generated a prevalent inertia towards using Deep Learning models, without examining in depth their benefits and downsides. This paper focuses on critically analyzing the state of the art in what refers to the use of Deep Learning for this particular ITS research area. To this end, we elaborate on the findings distilled from a review of publications from recent years, based on two taxonomic criteria. A posterior critical analysis is held to formulate questions and trigger a necessary debate about the issues of Deep Learning for traffic forecasting. The study is completed with a benchmark of diverse short-term traffic forecasting methods over traffic datasets of different nature, aimed to cover a wide spectrum of possible scenarios. Our experimentation reveals that Deep Learning could not be the best modeling technique for every case, which unveils some caveats unconsidered to date that should be addressed by the community in prospective studies. These insights reveal new challenges and research opportunities in road traffic forecasting, which are enumerated and discussed thoroughly, with the intention of inspiring and guiding future research efforts in this field.

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