A regularization approach to common correlated effects estimation (replication data)

DOI

Cross-section average-augmented panel regressions introduced by Pesaran (2006) have been a popular empirical tool to estimate panel data models with common factors. However, the corresponding common correlated effects (CCEs) estimator can be sensitive to the number of cross-section averages used and/or the static factor representation for observables. In this paper, we show that most of the corresponding problems documented in the literature can be solved once cross-section averages are appropriately regularized, thus extending the applicability of the CCE setup. As the standard plug-in variance estimators are not able to account for all sources of estimation uncertainty, we suggest the use of cross-section bootstrap to construct confidence intervals. The proposed procedure is illustrated both using real and simulated data.

Identifier
DOI https://doi.org/10.15456/jae.2022327.072341
Metadata Access https://www.da-ra.de/oaip/oai?verb=GetRecord&metadataPrefix=oai_dc&identifier=oai:oai.da-ra.de:775137
Provenance
Creator Juodis, Artūras
Publisher ZBW - Leibniz Informationszentrum Wirtschaft
Publication Year 2022
Rights Creative Commons Attribution 4.0 (CC-BY); Download
OpenAccess true
Contact ZBW - Leibniz Informationszentrum Wirtschaft
Representation
Language English
Resource Type Collection
Discipline Economics