具有横截面依赖的动态面板数据模型的估计:利用聚类依赖提高效率

Estimation of Dynamic Panel Data Models with Cross‐Sectional Dependence: Using Cluster Dependence for Efficiency

Journal of Applied Econometrics · 2015
被引 9
人大 AABS 3

中文导读

提出一种新的估计量,利用横截面依赖提高效率,同时稳健于依赖形式的误设,适用于动态面板数据模型,并在私立学校对学生成绩影响的实证中应用。

Abstract

Summary This paper considers the estimation of dynamic panel data models when data are suspected to exhibit cross‐sectional dependence. A new estimator is defined that uses cross‐sectional dependence for efficiency while being robust to the misspecification of the form of the cross‐sectional dependence. We show that using cross‐sectional dependence for estimation is important to obtain an estimator that is more efficient than existing estimators. This new estimator also uses nuisance parameters parsimoniously so that it exhibits good small‐ and large‐sample properties even when the number of time periods is large. As an empirical application, we estimate the effect of attending private school on student achievement using a value‐added model. Copyright © 2015 John Wiley & Sons, Ltd.

动态面板数据模型截面相依聚类相依估计效率