To tackle ever-increasing city traffic congestion problems, researchers have proposed deep learning models to aid decision-makers in the traffic control domain. Although the proposed models have been remarkably improved in recent years, there are still questions that need to be answered before deploying models. For example, it is difficult to figure out which models provide state-of-the-art performance, as recently proposed models have often been evaluated with different datasets and experiment environments. It is also difficult to determine which models would work when traffic conditions change abruptly (e.g., rush hour). In this work, we conduct two experiments to answer the two questions. In the first experiment, we conduct an experiment with the state-of-the-art models and the identical public datasets to compare model performance under a consistent experiment environment. We then extract a set of temporal regions in the datasets, whose speeds change abruptly and use these regions to explore model performance with difficult intervals. The experiment results indicate that Graph-WaveNet and GMAN show better performance in general. We also find that prediction models tend to have varying performances with data and intervals, which calls for in-depth analysis of models on difficult intervals for real-world deployment.
翻译:为解决不断增加的城市交通拥堵问题,研究人员提出了深入的学习模式,以帮助交通控制领域的决策者。尽管拟议的模式近年来有了显著改进,但在部署模式之前仍有一些问题需要回答。例如,很难确定哪些模式能提供最新业绩,因为最近提出的模式往往用不同的数据集和实验环境来评价,也很难确定在交通条件突然变化时哪些模式会起作用(例如,高峰时间)。在这项工作中,我们进行了两次实验,以回答这两个问题。在第一次实验中,我们试验了最先进的模型和相同的公共数据集,以便在一个一致的实验环境中比较模型的性能。我们随后在数据集中抽出一组时间区域,其速度会突变,并用这些区域来以困难的间隔探索模型性能。实验结果显示,在交通条件突然变化时(例如,高峰时间)和GMAN一般表现会更好。我们还发现,预测模型的性能往往与数据和间隔不同,需要深入分析困难的间隔期实际部署模型。