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Decomposition of time-series by level and change

机译:按级别和更改分解时间序列

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This article examines whether decomposing time series data into two parts - level and change - produces forecasts that are more accurate than those from forecasting the aggregate directly. Prior research found that, in general, decomposition reduced forecasting errors by 35%. An earlier study on decomposition into level and change found a forecast error reduction of 23%. The current study found that nowcasts consisting of a simple average of estimates from preliminary surveys and econometric models of the U.S. lodging market, improved the accuracy of final estimates of levels. Forecasts of change from an econometric model and the improved nowcasts reduced forecast errors by 29% when compared to direct forecasts of the aggregate. Forecasts of change from an extrapolation model and the improved nowcasts reduced forecast errors by 45%. On average then, the error reduction for this study was 37%. (C) 2015 Published by Elsevier Inc.
机译:本文研究了将时间序列数据分解为两个部分(级别和变化)是否会产生比直接预测聚合结果更准确的预测。先前的研究发现,一般而言,分解可将预测误差降低35%。较早的关于分解为水平和变化的研究发现预测的误差减少了23%。当前的研究发现,临近预报由初步调查和美国住宿市场的计量经济模型得出的估计值的简单平均值组成,可以提高最终水平的估计值的准确性。与直接预测总量相比,计量经济学模型的变化预测和改进的临近预报将预测误差减少了29%。通过外推模型对变化的预测以及改进的临近预报将预测误差降低了45%。平均而言,这项研究的误差减少了37%。 (C)2015年由Elsevier Inc.出版

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