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首页> 外文期刊>Journal of Forecasting >Local to unity, long-horizon forecasting thresholds for model selection in the AR(1)
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Local to unity, long-horizon forecasting thresholds for model selection in the AR(1)

机译:局部,统一,长水平的预测阈值,用于在AR(1)中进行模型选择

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摘要

This article introduces a novel framework for analysing long-horizon forecasting of the near non-stationary AR(1) model. Using the local to unity specification of the autoregressive parameter, I derive the asymptotic distributions of long-horizon forecast errors both for the unrestricted AR(l), estimated using an ordinary least squares (OLS) regression, and for the random walk (RW). I then identify functions, relating local to unity 'drift' to forecast horizon, such that OLS and RW forecasts share the same expected square error. OLS forecasts are preferred on one side of these 'forecasting thresholds', while RW forecasts are preferred on the other. In addition to explaining the relative performance of forecasts from these two models, these thresholds prove useful in developing model selection criteria that help a forecaster reduce error. Copyright (C) 2004 John Wiley Sons, Ltd.
机译:本文介绍了一种新颖的框架,可用于分析近距离非平稳AR(1)模型的长期预测。使用自回归参数的局部到统一规范,我得出了使用普通最小二乘(OLS)回归估计的无限制AR(l)和随机游走(RW)的长期预测误差的渐近分布。然后,我确定了将局部与统一“漂移”关联到预测范围的函数,以使OLS和RW预测共享相同的期望平方误差。在这些“预测阈值”中,OLS预测是首选,而另一方面,RW预测是首选。除了说明这两个模型的预测的相对性能之外,这些阈值还有助于开发有助于预测者减少误差的模型选择标准。版权所有(C)2004 John Wiley Sons,Ltd.

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