Publication: Econometric methods for business cycle dating
Authors
Camacho, Maximo ; Gadea, M. Dolores
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Publisher
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DOI
https://doi.org/10.1093/acrefore/9780190625979.013.885
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info:eu-repo/semantics/article
Description
© 2023. This document is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/
This document is the submitted version of a published work that appeared in final form in
Oxford Research Encyclopedia of Economics and Finance.
Abstract
Business cycle dating helps in developing economic analysis and is useful for economic agents
whether they be policy makers, investors or academics. This paper reviews old and recent
research on dating the reference cycle turning points and is intended as a guide to the applied
researcher. All these methods provide a statistical alternative to cycle dating committees,
although full automatism and researcher’s art could be complements rather than substitutes in
some dating scenarios. Our survey divides the dating literature into two groups with different
approaches to dating the business cycle from a set of coincident economic indicators: averagethen-
date or date-then average. In both cases, the dating techniques can be divided into nonparametric
and parametric. The paper shows the theoretical foundations of both types of
techniques and describes in detail the algorithms or estimation methods necessary for their
implementation. Finally, the paper describes empirical applications of the different methods
with data of different frequencies, trying to show how they work in practice and pointing out
their advantages and disadvantages. This empirical illustrations include a compilation of the
codes in different languages (R, Matlab or Gauss). In our opinion, future research should focus
on developing methods that are robust to changes in volatility or large outliers and on exploring
the usefulness of big data sources and the classification ability offered by machine learning
methods.
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Citation
Oxford Research Encyclopedia of Economics and Finance
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