
Open access
Date
2019-12Type
- Working Paper
ETH Bibliography
yes
Altmetrics
Abstract
This paper uses a Bayesian non-stationary dynamic factor model to extract common
trends and cycles from large datasets. An important but neglected feature of Bayesian
statistics allows to treat stationary and non-stationary time series equally in terms of
parameter estimation. Based on this feature we show how to extract common trends
and cycles from the data by ex-post processing the posterior output and describe how
to derive an agnostic output gap measure. We apply the procedure to a large panel
of quarterly time series that covers 158 macroeconomic and financial series for the
United States. We find that our derived output gap measure tracks the U.S. business
cycle well, exhibiting a high correlation with alternative estimates of the output gap.
Since the factors are extracted from a comprehensive dataset, the resulting output
gap estimates are stable at the current edge and can be decomposed in a new and
meaningful way. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000384365Publication status
publishedJournal / series
KOF Working PapersVolume
Publisher
KOF Swiss Economic Institute, ETH ZurichSubject
Non-Stationary Dynamic Factor Model; Potential Output Estimation; Output Gap DecompositionOrganisational unit
02525 - KOF Konjunkturforschungsstelle / KOF Swiss Economic Institute
06330 - KOF FB Konjunktur / KOF Macroeconomic forecasting
06336 - KOF FB Data Science und Makroökon. Meth. / KOF FB Data Science and Macroec. Methods
More
Show all metadata
ETH Bibliography
yes
Altmetrics