Article ID Journal Published Year Pages File Type
983792 Regional Science and Urban Economics 2013 18 Pages PDF
Abstract

We suggest and compare different methods for estimating spatial autoregressive panel models with randomly missing data in the dependent variable. We start with a random effects model and then generalize the model by introducing the spatial Mundlak approach. A nonlinear least squares method is suggested and a generalized method of moments estimation is developed for the model. A two-stage least squares estimation with imputation is proposed as well. We analytically compare these estimation methods and find that the generalized nonlinear least squares, best generalized two-stage least squares with imputation, and best method of moments estimators have identical asymptotic variances. The robustness of these estimation methods against unknown heteroscedasticity is also stressed since the traditional maximum likelihood approach yields inconsistent estimates under unknown heteroscedasticity. We provide finite sample evidence through Monte Carlo experiments.

► We study the SAR panel model with randomly missing data in the dependent variable. ► We suggest and compare three different methods for estimating the model. ► We generalize the model by introducing the spatial Mundlak approach. ► We stress the robustness of the estimators against unknown heteroscedasticity. ► We provide finite sample evidence through Monte Carlo experiments.

Related Topics
Social Sciences and Humanities Economics, Econometrics and Finance Economics and Econometrics
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