• Media type: E-Article
  • Title: Subset-continuous-updating GMM estimators for dynamic panel data models
  • Contributor: Ashley, Richard A. [Author]; Sun, Xiaojin [Author]
  • Published: December 2016
  • Published in: Econometrics ; 4(2016), 4 vom: Dez., Seite 1-13
  • Language: English
  • DOI: 10.3390/econometrics4040047
  • Identifier:
  • Keywords: Aufsatz in Zeitschrift
  • Origination:
  • Footnote:
  • Description: The two-step GMM estimators of Arellano and Bond (1991) and Blundell and Bond (1998) for dynamic panel data models have been widely used in empirical work; however, neither of them performs well in small samples with weak instruments. The continuous-updating GMM estimator proposed by Hansen, Heaton, and Yaron (1996) is in principle able to reduce the small-sample bias, but it involves high-dimensional optimizations when the number of regressors is large. This paper proposes a computationally feasible variation on these standard two-step GMM estimators by applying the idea of continuous-updating to the autoregressive parameter only, given the fact that the absolute value of the autoregressive parameter is less than unity as a necessary requirement for the data-generating process to be stationary. We show that our subset-continuous-updating method does not alter the asymptotic distribution of the two-step GMM estimators, and it therefore retains consistency. Our simulation results indicate that the subset-continuous-updating GMM estimators outperform their standard two-step counterparts in finite samples in terms of the estimation accuracy on the autoregressive parameter and the size of the Sargan-Hansen test.
  • Access State: Open Access