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A Novel Multilevel-SVD Method to Improve Multistep Ahead Forecasting in Traffic Accidents Domain

机译:一种改进交通事故领域多步提前预测的多层SVD方法

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摘要

Here is proposed a novel method for decomposing a nonstationary time series in components of low and high frequency. The method is based on Multilevel Singular Value Decomposition (MSVD) of a Hankel matrix. The decomposition is used to improve the forecasting accuracy of Multiple Input Multiple Output (MIMO) linear and nonlinear models. Three time series coming from traffic accidents domain are used. They represent the number of persons with injuries in traffic accidents of Santiago, Chile. The data were continuously collected by the Chilean Police and were weekly sampled from 2000:1 to 2014:12. The performance of MSVD is compared with the decomposition in components of low and high frequency of a commonly accepted method based on Stationary Wavelet Transform (SWT). SWT in conjunction with the Autoregressive model (SWT + MIMO-AR) and SWT in conjunction with an Autoregressive Neural Network (SWT + MIMO-ANN) were evaluated. The empirical results have shown that the best accuracy was achieved by the forecasting model based on the proposed decomposition method MSVD, in comparison with the forecasting models based on SWT.
机译:在此提出一种用于分解低频和高频分量中的非平稳时间序列的新颖方法。该方法基于汉克尔矩阵的多级奇异值分解(MSVD)。该分解用于提高多输入多输出(MIMO)线性和非线性模型的预测精度。使用了来自交通事故领域的三个时间序列。他们代表智利圣地亚哥交通事故中受伤的人数。数据是由智利警方连续收集的,并从2000:1到2014:12每周进行采样。将MSVD的性能与基于固定小波变换(SWT)的常用方法在低频和高频分量中的分解进行比较。评估了与自回归模型(SWT + MIMO-AR)结合的SWT和与自回归神经网络(SWT + MIMO-ANN)结合的SWT。实验结果表明,与基于SWT的预测模型相比,基于所提出的分解方法MSVD的预测模型获得了最佳的准确性。

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