Scholarly edition
Learning, forecasting and structural breaks
Abstract
Abstract We provide a general methodology for forecasting in the presence of structural breaks induced by unpredictable changes to model parameters. Bayesian methods of learning and model comparison are used to derive a predictive density that takes into account the possibility that a break will occur before the next observation. Estimates for the posterior distribution of the most recent break are generated as a by‐product of our procedure. We …
Authors
Maheu JM; Gordon S
Pagination
pp. 553-583
Publisher
Wiley
Publication Date
August 2008
DOI
10.1002/jae.1018