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Improve Forecasting Accuracy of Short-Term Highway Traffic Flows by Applying Robust Statistics to Combination of Forecasts

机译:通过将稳健的统计数据应用于预测的组合来提高短期公路交通流量的预测准确性

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The real highway traffic flows are time series sampled from typical complex systems. Combination of forecasts is necessary for the accurate, fast and reliable forecasts of them. The real traffic flows are complex stochastic processes, with time-varying probability distribution functions, and many outliers. The last two factors reduce the authenticity of point estimations of variances and correlation coefficients from the forecasting error series of the all individual methods, and directly reduce the accuracy of theoretical best combination weights. Using estimators to the complex time series by robust statistics, can improve the authenticity of point estimations of variances and correlation coefficients, then can improve the combination of forecasts accuracy of short-term highway traffic flows. Numerical test results show the improvements.
机译:真正的公路交通流量是从典型复杂系统采样的时间序列。预测的组合是准确,快速可靠的预测所必需的。实际交通流量是复杂的随机过程,具有时变的概率分布函数和许多异常值。最后两个因素降低了来自所有单独方法的预测错误系列的差异和相关系数的点估计的真实性,直接降低了理论最佳组合权重的准确性。通过强大的统计数据使用估算器到复杂的时间序列,可以改善差异和相关系数的点估计的真实性,然后可以提高预测短期公路交通流量的准确性的组合。数值测试结果显示了改进。

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