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Large-scale short-term urban taxi demand forecasting using deep learning

机译:基于深度学习的大规模短期城市出租车需求预测

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The world has seen in recent years great successes in applying deep learning (DL) for many application domains. Though powerful, DL is not easy to be used well. In this invited paper, we study an urban taxi demand forecast problem using DL, and we show a number of key insights in modeling a domain problem as a suitable DL task. We also conduct a systematic comparison of two recent deep neural networks (DNNs) for taxi demand prediction, i.s., the ST-ResNet and FLC-Net, on New York city taxi record dataset. Our experimental results show DNNs indeed outperform most traditional machine learning techniques, but such superior results can only be achieved with proper design of the right DNN architecture, where domain knowledge plays a key role.
机译:近年来,世界已经看到在许多应用程序领域中应用深度学习(DL)的巨大成功。 DL虽然功能强大,但很难很好地使用。在这篇受邀的论文中,我们使用DL研究了城市出租车需求预测问题,并且在将领域问题建模为合适的DL任务中展示了许多关键见解。我们还对纽约出租车记录数据集上两个最近的用于出租车需求预测的深度神经网络(DNN)进行了系统比较,即ST-ResNet和FLC-Net。我们的实验结果表明,DNN确实胜过大多数传统的机器学习技术,但是只有在正确设计DNN体系结构(领域知识起着关键作用)的情况下,才能获得如此优异的结果。

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