三维重力模型中的偏误与一致性

Bias and consistency in three-way gravity models

Journal of International Economics · 2021
被引 156 · 同刊同年前 2%
人大 AABS 4

中文导读

研究了三维泊松伪最大似然估计量在固定T面板中的一致性和偏误问题,发现其一致但置信区间和标准误有偏,并提供了修正方法,对贸易政策效应估计有用。

Abstract

We study the incidental parameter problem for the "three-way" Poisson Pseudo-Maximum Likelihood ("PPML") estimator recently recommended for identifying the effects of trade policies and in other panel data gravity settings. Despite the number and variety of fixed effects involved, we confirm PPML is consistent for fixed T and we show it is in fact the only estimator among a wide range of PML gravity estimators that is generally consistent in this context when T is fixed. At the same time, asymptotic confidence intervals in fixed-T panels are not correctly centered at the true parameter values, and cluster-robust variance estimates used to construct standard errors are generally biased as well. We characterize each of these biases analytically and show both numerically and empirically that they are salient even for real-data settings with a large number of countries. We also offer practical remedies that can be used to obtain more reliable inferences of the effects of trade policies and other time-varying gravity variables, which we make available via an accompanying Stata package called ppml_fe_bias.

PPML估计量固定效应偶然参数问题聚类稳健标准误偏误