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Optimal Hyperparameter Tuning using Meta-Learning for Big Traffic Datasets

机译:使用元学习的大型交通数据集优化超参数调整

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Big traffic data is an emergent issue of Intelligent Transportation System (ITS) since a large of data can be produced every day. Consequently, traffic flow prediction becomes the main component for developing ITS in terms of providing accurate and timely traffic information. In this study, we take the traffic forecasting problem into account using Deep learning (DL) models. Specifically, traffic data are from many devices on the roads in which training by DL models have to face with expensive problems (e.g., time-consuming and human expertise). Therefore, we focus on hyperparameter tuning for training big traffic datasets using meta-learning to improve the automatic learning process and reduce time-consuming tasks. Regarding the experiment, we take data from the Vehicle Detection System (VDS) as the case study for evaluating our approach. Specifically, data have collected from 21 sensors which are located in an urban area. The experiments show promising results of our proposed approach for training multiple traffic datasets.
机译:大流量数据是智能交通系统(ITS)的一个新兴问题,因为每天可以产生大量数据。因此,就提供准确和及时的交通信息而言,交通流量预测成为开发ITS的主要组成部分。在这项研究中,我们使用深度学习(DL)模型将流量预测问题考虑在内。具体而言,交通数据来自道路上的许多设备,其中通过DL模型进行训练必须面对昂贵的问题(例如,耗时和人为的专业知识)。因此,我们专注于超参数调整,以使用元学习来训练大型交通数据集,从而改善自动学习过程并减少耗时的任务。关于实验,我们以来自车辆检测系统(VDS)的数据为案例研究,以评估我们的方法。具体而言,已从位于市区的21个传感器收集了数据。实验表明,我们提出的用于训练多个交通数据集的方法的结果令人鼓舞。

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