Monash University
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Forecasting Under Strucural Break Uncertainty

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journal contribution
posted on 2022-11-04, 03:48 authored by Jing Tian, Heather M. Anderson
This paper proposes two new weighting schemes that average forecasts using different estimation windows to account for structural change. We let the weights reflect the probability of each time point being the most-recent break point, and we use the reversed ordered Cusum test statistics to capture this intuition. The second weighting method simply imposes heavier weights on those forecasts that use more recent information. The proposed combination forecasts are evaluated using Monte Carlo techniques, and we compare them with forecasts based on other methods that try to account for structural change, including average forecasts weighted by past forecasting performance and techniques that first estimate a break point and then forecast using the post break data. Simulation results show that our proposed weighting methods often outperform the others in the presence of structural breaks. An empirical application based on a NAIRU Phillips curve model for the United States indicates that it is possible to outperform the random walk forecasting model when we employ forecasting methods that account for break uncertainty.

History

Classification-JEL

C22, C53, E37

Creation date

2011-07

Working Paper Series Number

8/11

Length

36 pages

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2011-8