Econometrica: Jul, 2019, Volume 87, Issue 4
Inference in Group Factor Models With an Application to Mixed-Frequency Data
https://doi.org/10.3982/ECTA14690
p. 1267-1305
E. Andreou, P. Gagliardini, E. Ghysels, M. Rubin
We derive asymptotic properties of estimators and test statistics to determineâin a grouped data settingâcommon versus groupâspecific factors. Despite the fact that our test statistic for the number of common factors, under the null, involves a parameter at the boundary (related to unit canonical correlations), we derive a parameterâfree asymptotic Gaussian distribution. We show how the group factor setting applies to mixedâfrequency data. As an empirical illustration, we address the question whether Industrial Production (IP) is still the dominant factor driving the U.S. economy using a mixedâfrequency data panel of IP and nonâIP sectors. We find that a single common factor explains 89% of IP output growth and 61% of total GDP growth despite the diminishing role of manufacturing.
Supplemental Material
Supplement to "Inference in Group Factor Models with an Application to Mixed Frequency Data"
This zip file contains the codes and data used in our empirical application, and an online appendix with additional material not found within the manuscript.
View zip