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Can out-of-sample forecast comparisons help prevent overfitting?

✍ Scribed by Todd E. Clark


Book ID
102214181
Publisher
John Wiley and Sons
Year
2004
Tongue
English
Weight
141 KB
Volume
23
Category
Article
ISSN
0277-6693

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✦ Synopsis


Abstract

This paper shows that out‐of‐sample forecast comparisons can help prevent data mining‐induced overfitting. The basic results are drawn from simulations of a simple Monte Carlo design and a real data‐based design similar to those used in some previous studies. In each simulation, a general‐to‐specific procedure is used to arrive at a model. If the selected specification includes any of the candidate explanatory variables, forecasts from the model are compared to forecasts from a benchmark model that is nested within the selected model. In particular, the competing forecasts are tested for equal MSE and encompassing. The simulations indicate most of the post‐sample tests are roughly correctly sized. Moreover, the tests have relatively good power, although some are consistently more powerful than others. The paper concludes with an application, modelling quarterly US inflation. Copyright © 2004 John Wiley & Sons, Ltd.


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