固定T动态面板数据估计量:多因子误差结构

Fixed T dynamic panel data estimators with multifactor errors

Econometric Reviews · 2016
被引 36 · 同刊同年前 8%
人大 A-ABS 3

中文导读

分析了一类具有多因子误差结构的固定T动态面板数据估计量,通过大规模模拟考察了弱外生协变量、因子载荷相关性等未充分探索的场景,并应用于澳大利亚犯罪数据,发现其政策含义与标准GMM估计量显著不同。

Abstract

This article analyzes a growing group of fixed T dynamic panel data estimators with a multifactor error structure. We use a unified notational approach to describe these estimators and discuss their properties in terms of deviations from an underlying set of basic assumptions. Furthermore, we consider the extendability of these estimators to practical situations that may frequently arise, such as their ability to accommodate unbalanced panels and common observed factors. Using a large-scale simulation exercise, we consider scenarios that remain largely unexplored in the literature, albeit being of great empirical relevance. In particular, we examine (i) the effect of the presence of weakly exogenous covariates, (ii) the effect of changing the magnitude of the correlation between the factor loadings of the dependent variable and those of the covariates, (iii) the impact of the number of moment conditions on bias and size for GMM estimators, and finally (iv) the effect of sample size. We apply each of these estimators to a crime application using a panel data set of local government authorities in New South Wales, Australia; we find that the results bear substantially different policy implications relative to those potentially derived from standard dynamic panel GMM estimators. Thus, our study may serve as a useful guide to practitioners who wish to allow for multiplicative sources of unobserved heterogeneity in their model.

动态面板数据固定T估计量多因子误差结构GMM估计量