Generic Conditions for Forecast Dominance
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BORIS DOI
Publisher DOI
Description
Recent studies have analyzed whether one forecast method dominates another under a class of consistent scoring functions. While the existing literature focuses on empirical tests of forecast dominance, little is known about the theoretical conditions under which one forecast dominates another. To address this question, we derive a new characterization of dominance among forecasts of the mean functional. We present various scenarios under which dominance occurs. Unlike existing results, our results allow for the case that the forecasts’ underlying information sets are not nested, and allow for uncalibrated forecasts that suffer, e.g., from model misspecification or parameter estimation error. We illustrate the empirical relevance of our results via data examples from finance and economics.
Date of Publication
2020
Publication Type
Article
Language(s)
en
Contributor(s)
Additional Credits
Series
Journal of Business and Economic Statistics
Publisher
Taylor & Francis
ISSN
0735-0015
Access(Rights)
open.access