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Precision, bias, and uncertainty for state population forecasts: an exploratory analysis of time series models

机译:州人口预测的准确性,偏差和不确定性:时间序列模型的探索性分析

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Many researchers have used time series models to construct population forecasts and prediction intervals at the national level, but few have evaluated the accuracy of their forecasts or the out-of-sample validity of their prediction intervals. Fewer still have developed models for subnational areas. In this study, we develop and evaluate six ARIMA time series models for states in the United States. Using annual population estimates from 1900 to 2000 and a variety of launch years, base periods, and forecast horizons, we construct population forecasts for four states chosen to reflect a range of population size and growth rate characteristics. We compare these forecasts with population counts for the corresponding years and find precision, bias, and the width of prediction intervals to vary by state, launch year, model specification, base period, and forecast horizon. Furthermore, we find that prediction intervals based on some ARIMA models provide relatively accurate forecasts of the distribution of future population counts but prediction intervals based on other models do not. We conclude that there is some basis for optimism regarding the possibility that ARIMA models might be able to produce realistic prediction intervals to accompany population forecasts, but a great deal of work remains to be done before we can draw any firm conclusions.
机译:许多研究人员已使用时间序列模型来构建国家一级的人口预测和预测间隔,但很少有人评估其预测的准确性或预测间隔的样本外有效性。为次国家地区开发模型的人仍然较少。在这项研究中,我们为美国各州开发和评估了6种ARIMA时间序列模型。利用1900年至2000年的年度人口估算值以及各种发射年,基准期和预测范围,我们构建了四个州的人口预测值,以反映一系列人口规模和增长率特征。我们将这些预测与相应年份的人口计数进行比较,发现精度,偏差和预测区间的宽度会因州,发射年,模型规格,基准期和预测范围而异。此外,我们发现基于某些ARIMA模型的预测间隔可以提供相对准确的未来人口计数分布预测,而基于其他模型的预测间隔则不能。我们得出结论,对于ARIMA模型可能能够产生与人口预测相伴的现实预测区间的可能性,存在一定的乐观基础,但是在得出任何肯定的结论之前,仍有大量工作要做。

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