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Inference on Factor Structures in Heterogeneous Panels

Academic Article
Publication Date:
2012
abstract:
This paper develops an estimation and testing framework for a stationary large panel model with observable regressors and unobservable common factors. We allow for slope heterogeneity and for correlation between the common factors and the regressors. We propose a two stage estimation procedure for the unobservable common factors and their loadings, based on applying Pesaran’s (2006) CCE estimator and the Principal Component estimator. We also develop two tests for the null of no factor structure: one for the null that loadings are cross sectionally homogeneous, and one for the null that common factors are homogeneous over time. Our tests are based on using extremes of the estimated loadings and common factors. The test statistics have an asymptotic Gumbel distribution under the null, and have power versus alternatives where only one loading or common factor differs from the others. Monte Carlo evidence shows that the tests have the correct size and good power.
Iris type:
1.1 Articolo in rivista
Keywords:
large panels; CCE estimator; Principal component estimator; testing for factor structure; extreme value distribution
List of contributors:
Castagnetti, Carolina; Rossi, Eduardo; Lorenzo, Trapani
Authors of the University:
CASTAGNETTI CAROLINA
ROSSI EDUARDO
Handle:
https://iris.unipv.it/handle/11571/531843
Published in:
DEM WORKING PAPER SERIES
Journal
DEM WORKING PAPER SERIES
Series
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