A Transformed System GMM Estimator for Dynamic Panel Data Models

Posted: 22 Feb 2014 Last revised: 27 Feb 2014

See all articles by Xiaojin Sun

Xiaojin Sun

Virginia Tech

Richard A. Ashley

Virginia Tech. - Department of Economics

Date Written: February 26, 2014

Abstract

The system GMM estimator developed by Blundell and Bond (1998) for dynamic panel data models has been widely used in empirical work; however, it does not perform well with weak instruments. This paper proposes a variation on the system GMM estimator, based on a simple transformation of the dependent variable. Simulation results indicate that, infinite samples, this transformed system GMM estimator greatly outperforms its conventional counterpart in estimating the coefficient of the lagged dependent variable, especially when the variation in the fixed effects is large relative to that in the idiosyncratic shocks and when the dependent variable is highly persistent. Applying this transformation also substantially strengthens the reliability of inferences on the overall model specification based upon the Sargan/Hansen test. As illustrations, the transformed system GMM estimator is applied to two empirical examples from the literature: a production function and an employment equation.

Keywords: Dynamic Panel Data Models, Transformed System GMM Estimator, Sargan/Hansen Test

JEL Classification: C18, C23, D24

Suggested Citation

Sun, Xiaojin and Ashley, Richard A., A Transformed System GMM Estimator for Dynamic Panel Data Models (February 26, 2014). Available at SSRN: https://ssrn.com/abstract=2398717 or http://dx.doi.org/10.2139/ssrn.2398717

Xiaojin Sun (Contact Author)

Virginia Tech ( email )

250 Drillfield Drive
Blacksburg, VA 24061
United States

Richard A. Ashley

Virginia Tech. - Department of Economics ( email )

250 Drillfield Drive
Blacksburg, VA 24061
United States

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