Integrating Quarterly Data into a Dynamic Factor Model of US Monthly GDP |
| |
Authors: | Firmin Vlavonou Stephen Gordon |
| |
Affiliation: | Département d'économique and CIRPEE, Université Laval, Quebec City, Canada |
| |
Abstract: | This paper develops and estimates a dynamic factor model in which estimates for unobserved monthly US Gross Domestic Product (GDP) are consistent with observed quarterly data. In contrast to existing approaches, the quarterly averages of our monthly estimates are exactly equal to the Bureau of Economic Analysis (BEA) quarterly estimates. The relationship between our monthly estimates and the quarterly data is therefore the same as the relationship between quarterly and annual data. The study makes use of Bayesian Markov chain Monte Carlo and data augmentation techniques to simulate values for the logarithms on monthly US GDP. The imposition of the exact linear quarterly constraint produces a non‐standard distribution, necessitating the implementation of a Metropolis simulation step in the estimation. Our methodology can be easily generalized to cases where the variable of interest is monthly GDP and in such a way that the final results incorporate the statistical uncertainty associated with the monthly GDP estimates. We provide an example by incorporating our monthly estimates into a Markov switching model of the US business cycle. Copyright © 2016 John Wiley & Sons, Ltd. |
| |
Keywords: | Unobserved monthly GDP Interpolated data Dynamic factor model MCMC and Data augmentation Markov switching and Metropolis |
|
|