Using structural break inference for forecasting time series

被引:0
|
作者
Gantungalag Altansukh
Denise R. Osborn
机构
[1] National University of Mongolia,Department of Economics
[2] University of Manchester,Economics, School of Social Sciences
来源
Empirical Economics | 2022年 / 63卷
关键词
Forecasting time series; Structural breaks; Confidence intervals; Combining forecasts; Productivity growth; C32; C53;
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摘要
Rather than relying on a potentially poor point estimate of a coefficient break date when forecasting, this paper proposes averaging forecasts over sub-samples indicated by a confidence interval or set for the break date. Further, we examine whether explicit consideration of a possible variance break and the use of a two-step methodology improves forecast accuracy compared with using heteroskedasticity robust inference. Our Monte Carlo results and empirical application to US productivity growth show that averaging using the likelihood ratio-based confidence set typically performs well in comparison with other methods, while two-step inference is particularly useful when a variance break occurs concurrently with or after any coefficient break.
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页码:1 / 41
页数:40
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