Dimitrios P. Louzis
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steady‐state modeling and macroeconomic forecasting quality (replication data)

Vector autoregressions (VARs) with informative steady-state priors are standard forecasting tools in empirical macroeconomics. This study proposes (i) an adaptive hierarchical normal-gamma prior on steady states, (ii) a time-varying steady-state specification which accounts for structural breaks in the unconditional mean, and (iii) a generalization of steady-state VARs with fat-tailed and heteroskedastic error terms. Empirical analysis, based on a real-time dataset of 14 macroeconomic variables, shows that, overall, the hierarchical steady-state specifications materially improve out-of-sample forecasting for forecasting horizons longer than 1 year, while the time-varying specifications generate superior forecasts for variables with significant changes in their unconditional mean.

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Suggested Citation

Louzis, Dimitrios P. (2018): Steady‐state modeling and macroeconomic forecasting quality (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://jda-test.zbw.eu/dataset/steadystate-modeling-and-macroeconomic-forecasting-quality?activity_id=fc31f5bc-3b46-4442-9c7b-62505ad7c8bc