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Dating the Business Cycle in Britain

Published online by Cambridge University Press:  26 March 2020

Michael Artis*
Affiliation:
EUI, Florence, University of Manchester and CEPR

Abstract

The NIESR's monthly GDP series is an innovative feature; most GDP estimates are published at an annual, or quarterly frequency at best. For purposes of dating the business cycle the availability of this series is an asset, unexploited until this paper. The paper applies a version of the standard business (or ‘classical’) cycle dating algorithm to the data, after light smoothing to remove outliers. Three classical cycles are detected in the period between the early 1970s and 2002, with turning points which are close to (but usually precede) classical cycle dating which does not benefit from the availability of monthly GDP, and instead relies on a ‘coincident’ indicator methodology. In addition the turning points of a deviation cycle are identified.

Type
Articles
Copyright
Copyright © 2002 National Institute of Economic and Social Research

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Footnotes

The author is grateful to Ekaterina Vostroknoutova for research assistance and to Tommaso Proietti for his BB(M) progammes.

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