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.
机构:
Univ Pablo de Olavide, Data Sci Lab, Seville, Spain
Univ Autonoma Chile, Temuco, Chile
Univ Hradec Kralove, Hradec Kralove, Czech RepublicUniv Pablo de Olavide, Data Sci Lab, Seville, Spain
Salmeron, Jose L.
Froelich, Wojciech
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机构:
Univ Silesia, Inst Comp Sci, Sosnowiec, PolandUniv Pablo de Olavide, Data Sci Lab, Seville, Spain