Title of article :
Maximum likelihood estimation and inference methods for the covariance stationary panel AR(1)/unit root model
Author/Authors :
Hugo Kruiniger، نويسنده , , Hugo، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2008
Abstract :
This paper considers Maximum Likelihood (ML) based estimation and inference procedures for linear dynamic panel data models with fixed effects.
per first studies the asymptotic properties of MaCurdy’s [MaCurdy, T., 1982. The use of time series processes to model the time structure of earnings in a longitudinal data analysis. Journal of Econometrics 18, 83–114] First Difference Maximum Likelihood (FDML) estimator for the covariance stationary panel AR(1)/unit root model with fixed effects, viz. y i , t = ρ y i , t − 1 + ( 1 − ρ ) μ i + ε i , t , under a variety of asymptotic plans. Subsequently, the paper shows through Monte Carlo simulations for panels of various dimensions the favourable finite sample properties of the FDMLE for ρ as compared to those of a number of alternative fixed effects ML estimators for ρ under covariance stationarity and normality of the data. The paper also discusses panel unit root test procedures that are based on the FDMLE. A Monte Carlo study conducted for one version of these tests reveals that it has very good size and power properties in comparison with alternative panel unit root tests.
Keywords :
Dynamic panel data models , Unit root test , Maximum likelihood , Efficiency bounds , Multi-index asymptotics
Journal title :
Journal of Econometrics
Journal title :
Journal of Econometrics