Publication | Closed Access
Density Forecasts With Midas Models
32
Citations
61
References
2016
Year
Forecasting MethodologyProbabilistic ForecastingEngineeringEconomic ForecastingData ScienceBootstrap ResamplingPredictive AnalyticsVarious Midas RegressionsMacroeconomic ForecastingEconometricsForecastingStatisticsDensity ForecastsVarious Midas Specifications
We propose a parametric block wild bootstrap approach to compute density forecasts for various types of mixed-data sampling (MIDAS) regressions. First, Monte Carlo simulations show that predictive densities for the various MIDAS models derived from the block wild bootstrap approach are more accurate in terms of coverage rates than predictive densities derived from either a residual-based bootstrap approach or by drawing errors from a normal distribution. This result holds whether the data-generating errors are normally independently distributed, serially correlated, heteroskedastic or a mixture of normal distributions. Second, we evaluate density forecasts for quarterly US real output growth in an empirical exercise, exploiting information from typical monthly and weekly series. We show that the block wild bootstrapping approach, applied to the various MIDAS regressions, produces predictive densities for US real output growth that are well calibrated. Moreover, relative accuracy, measured in terms of the logarithmic score, improves for the various MIDAS specifications as more information becomes available. Copyright © 2016 John Wiley & Sons, Ltd.
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