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Implications of Spatiotemporal Data Aggregation on Short-Term Traffic Prediction Using Machine Learning Algorithms

机译:时空数据聚集对使用机器学习算法的短期交通预测的影响

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Short-term traffic prediction is a key component of Intelligent Transportation Systems. It uses historical data to construct models for reliably predicting traffic state at specific locations in road networks in the near future. Despite being a mature field, short-term traffic prediction still poses some open problems related to the choice of optimal data resolution, prediction of nonrecurring congestion, and the modelling of relevant spatiotemporal dependencies. As a step towards addressing these problems, this paper investigates the ability of Artificial Neural Networks, Random Forests, and Support Vector Regression algorithms to reliably model traffic flow at different data resolutions and respond to unexpected traffic incidents. We also explore different feature selection methods to identify and better understand the spatiotemporal attributes that most influence the reliability of these models. Experimental results indicate that data aggregation does not necessarily achieve good performance for multivariate spatiotemporal machine learning models. The models learned using high-resolution 30-second input data outperformed the corresponding baseline ARIMA models by 8%. Furthermore, feature selection based on Recursive Feature Elimination resulted in models that outperformed those based on linear correlation-based feature selection.
机译:短期交通预测是智能运输系统的关键组成部分。它使用历史数据来构建在不久的将来在道路网络中特定位置的可靠预测交通状态。尽管是成熟的领域,短期交通预测仍然困扰了与选择最佳数据分辨率,非训练拥塞预测的开放问题以及相关的时空依赖性的建模。作为解决这些问题的步骤,本文调查了人工神经网络,随机林和支持向量回归算法的能力,以可靠地模拟不同数据分辨率的业务流量,并响应意外的流量事件。我们还探索不同的特征选择方法来识别和更好地了解最大影响这些模型的可靠性的时空属性。实验结果表明,数据聚集不一定对多元时空机器学习模型产生良好的性能。使用高分辨率30秒输入数据学习的模型优于相应的基线Arima模型8%。此外,基于递归特征消除的特征选择导致模型基于基于线性相关的特征选择优于那些。

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