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Optimal Seeds Discovery of Traffic Congestions

机译:交通拥堵的最佳种子发现

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With the rapid adoption of wireless sensor networks (WSNs) into smart cities and vehicle networks, traffic problems can be evaluated and predicted in real-time. In this paper, we propose a data-driven approach to find out the most influential causes of traffic congestions. We first find the top most influential regions and use the Fortune’s algorithm to partition the city. Second, we propose a model with three correlations to measure the dependency between two traffic events, which are spatial correlation, temporal correlation, and logical correlation. Third, we adapt the Independent Cascade model with a pruning algorithm to address traffic congestions. At last, we conduct intensive experiments on large real-world GPS trajectories generated by more than 10,200 taxis in Shanghai to demonstrate the performance of our approaches.
机译:随着无线传感器网络(WSN)在智能城市和车辆网络中的迅速采用,可以实时评估和预测交通问题。在本文中,我们提出了一种数据驱动的方法来找出交通拥堵的最有影响的原因。我们首先找到最有影响力的地区,然后使用《财富》算法对城市进行分区。其次,我们提出了一个具有三个相关性的模型来测量两个交通事件之间的相关性,即空间相关性,时间相关性和逻辑相关性。第三,我们采用修剪算法修改独立级联模型,以解决交通拥堵问题。最后,我们对上海超过10,200辆出租车产生的大型现实GPS轨迹进行了深入的实验,以证明我们的方法的性能。

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