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Small Sample Properties of Forecasts from Autoregressive Models under Structural Breaks

机译:结构破裂下自回归模型预测的小样本属性

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摘要

This paper develops a theoretical framework for the analysis of small-sample properties of forecasts from general autoregressive models under structural breaks. Finite-sample results for the mean squared forecast error of one-step ahead forecasts are derived, both conditionally and unconditionally, and numerical results for different types of break specifications are presented. It is established that forecast errors are unconditionally unbiased even in the presence of breaks in the autoregressive coefficients and/or error variances so long as the unconditional mean of the process remains unchanged. Insights from the theoretical analysis are demonstrated in Monte Carlo simulations and on a range of macroeconomic time series from G7 countries. The results are used to draw practical recommendations for the choice of estimation window when forecasting from autoregressive models subject to breaks.
机译:本文为分析结构断裂下一般自回归模型的预测的小样本性质提供了理论框架。有条件和无条件地得出单步提前预报的均方预报误差的有限样本结果,并给出了不同类型的突破规格的数值结果。可以确定的是,即使过程的无条件均值保持不变,即使在自回归系数和/或误差方差出现的情况下,预测误差也将无条件地无偏。理论分析的见解在蒙特卡洛模拟以及来自G7国家的一系列宏观经济时间序列中得到了证明。当从易受破坏的自回归模型进行预测时,结果可用于为估计窗口的选择提供实用的建议。

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