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Traffic forecasting in complex urban networks: Leveraging big data and machine learning

机译:复杂城市网络中的流量预测:利用大数据和机器学习

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Accurate network-wide real time traffic forecasting is essential for next generation smart cities. In this context, we study a novel and complex traffic data set and explore the potential to apply big data and machine learning analysis. We evaluate several hypotheses and find that the availability of big data is able to facilitate more accurate predictions. Furthermore, we find that spatial aspects have more influence than temporal ones and that careful choice of thresholding parameters is crucial for high performance classification.
机译:准确的全网实时流量预测对于下一代智能城市至关重要。在这种情况下,我们研究了一种新颖而复杂的交通数据集,并探索了应用大数据和机器学习分析的潜力。我们评估了几种假设,发现大数据的可用性能够促进更准确的预测。此外,我们发现空间方面比时间方面具有更大的影响,并且谨慎选择阈值参数对于高性能分类至关重要。

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