Estimation and Inference in Dynamic Unbalanced Panel-data Models with a Small Number of Individuals

Bocconi University

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Abstract

This article describes a new Stata routine, xtlsdvc, that computes bias-corrected least-squares dummy variable (LSDV) estimators and their bootstrap variance–covariance matrix for dynamic (possibly) unbalanced panel-data models with strictly exogenous regressors. A Monte Carlo analysis is carried out to evaluate the finite-sample performance of the bias-corrected LSDV estimators in comparison to the original LSDV estimator and three popular N-consistent estimators: Arellano–Bond, Anderson–Hsiao and Blundell–Bond. Results strongly support the bias-corrected LSDV estimators according to bias and root mean squared error criteria when the number of individuals is small.

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Topics & keywords

Keywords
  • Estimator
  • Statistics
  • Econometrics
  • Panel data
  • Mathematics
  • Inference
  • Monte Carlo method
  • Variance (accounting)
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