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Multidimensional Scaling-Based Data Dimension Reduction Method for Application in Short-Term Traffic Flow Prediction for Urban Road Network

机译:基于多维尺度的数据降维方法在城市路网短期交通流量预测中的应用

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This study develops a multidimensional scaling- (MDS-) based data dimension reduction method. The method is applied to short-term traffic flow prediction in urban road networks. The data dimension reduction method can be divided into three steps. The first is data selection based on qualitative analysis, the second is data grouping using the MDS method, and the last is data dimension reduction based on a correlation coefficient. Backpropagation neural network (BPNN) and multiple linear regression (MLR) models are employed in four kinds of urban traffic environments to test whether the proposed method improves the prediction accuracy of traffic flow. The results show that prediction models using traffic data after dimension reduction outperform the same prediction models using other datasets. The proposed method provides an alternative to existing models for urban traffic prediction.
机译:这项研究开发了一种基于多维缩放比例(MDS-)的数据降维方法。该方法适用于城市道路网中的短期交通流量预测。数据降维方法可以分为三个步骤。第一个是基于定性分析的数据选择,第二个是使用MDS方法进行数据分组,最后一个是基于相关系数的数据降维。在四种城市交通环境中,采用了BP神经网络和多元线性回归模型,验证了该方法是否能够提高交通流的预测精度。结果表明,降维后使用流量数据的预测模型优于使用其他数据集的相同预测模型。所提出的方法为现有的城市交通预测模型提供了一种替代方法。

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