An approach to increasing forecast-combination accuracy through VAR error modeling

Weigt Till, Wilfling Bernd

Research article (journal) | Peer reviewed

Abstract

We consider a situation in which the forecaster has available M individual forecasts of a univariate target variable. We propose a 3-step procedure designed to exploit the interrelationships among the M forecast-error series (estimated from a large time-varying parameter VAR model of the errors, using past observations) with the aim of obtaining more accurate predictions of future forecast errors. The refined future forecast-error predictions are then used to obtain M new individual forecasts that are adapted to the information from the estimated VAR. The adapted M individual forecasts are ultimately combined and any potential accuracy gains from the adapted combination forecasts analyzed. We evaluate our approach in an out-of-sample forecasting analysis, using a well established 7-country data set on output growth. Our 3-step procedure yields substantial accuracy gains (in terms of loss reductions of up to 18%) for the simple average and three time-varying-parameter combination forecasts.

Details about the publication

JournalJournal of Forecasting
Volume40
Issue4
Page range686-699
StatusPublished
Release year2021 (02/06/2021)
Language in which the publication is writtenEnglish
DOI10.1002/for.2733
KeywordsBayesian VAR estimation; Dynamic model averaging; Forecast combinations; Forgetting factors; Large time-varying parameter VARs; State-space model

Authors from the University of Münster

Weigt, Till Sebastian
Chair of Empirical Economics
Wilfling, Bernd
Professur für Volkswirtschaftslehre, empirische Wirtschaftsforschung (Prof. Wilfling)