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A Neural Network-based Approach for Public Transportation Prediction with Traffic Density Matrix

机译:基于神经网络的交通密度矩阵公交预测方法

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In today's modern cities, mobility is of crucial importance, and public transportation is particularly concerned. The main objective is to propose solutions to a given, practical problem, which specifically concerns the bus arrival time at various bus stop stations, by taking to account local traffic conditions. We show that a global prediction approach, under some global macro-parameters (e.g., total number of vehicles or pedestrians) is not feasible. This observation leads us to the introduction of a finer granularity approach, where the traffic conditions are represented in terms of a traffic density matrix. Under this new paradigm, the experimental results obtained with both linear and neural networks (NN) approaches show promising prediction performances. Thus, the NN approach yields 24% more accurate prediction performances than a basic, linear regression.
机译:在当今的现代城市中,出行至关重要,尤其要关注公共交通。主要目的是通过考虑当地的交通状况,针对给定的实际问题提出解决方案,该问题特别涉及各个公交车站的公交到达时间。我们表明,在某些全局宏参数(例如,车辆或行人总数)下,采用全局预测方法是不可行的。该观察结果导致我们引入了更精细的粒度方法,其中,以交通密度矩阵表示交通状况。在这种新范式下,使用线性和神经网络(NN)方法获得的实验结果均显示出令人鼓舞的预测性能。因此,与基本的线性回归相比,NN方法的预测性能提高了24%。

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