Open access
Author
Date
2024-06Type
- Working Paper
ETH Bibliography
yes
Altmetrics
Abstract
This paper presents a weekly GDP indicator for Switzerland, which addresses the
limitations of existing economic activity indicators using alternative high-frequency
data created in the wake of the COVID-19 pandemic. The indicator is obtained
from a Bayesian mixed-frequency dynamic factor model that integrates conventional
macroeconomic and alternative high-frequency data at weekly, monthly, and
quarterly frequencies. By estimating missing observations as latent states through
data augmentation, incorporating stochastic volatility in the state equation, and
accounting for serial correlation in the measurement errors, the model is able to extract
business cycle information from a wide range of data frequencies and capture
the large and sudden fluctuations during the COVID-19 pandemic. An empirical
application illustrates that the indicator accurately approximates weekly quarteron-
quarter GDP growth for Switzerland and provides valuable information on the
trajectory of GDP at high-frequency, especially during crisis periods. Finally, a
pseudo-real-time analysis demonstrates credible nowcasts and a fast convergence
towards its final version. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000680422Publication status
publishedJournal / series
KOF Working PapersVolume
Publisher
KOF Swiss Economic Institute, ETH ZurichSubject
Dynamic factor model; Business Cycle Index; High-frequency data; Economic Activity Indicator; Covid-19Organisational unit
02525 - KOF Konjunkturforschungsstelle / KOF Swiss Economic Institute
06330 - KOF FB Konjunktur / KOF Macroeconomic forecasting
More
Show all metadata
ETH Bibliography
yes
Altmetrics