Currency Unions and Trade: A PPML Re‐Assessment with High‐Dimensional Fixed Effects

Mario Larch, Joschka Wanner, Y. Yotov, Thomas Zylkin
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引用次数: 142

Abstract

Recent work on the effects of currency unions (CUs) on trade stresses the importance of using many countries and years in order to obtain reliable estimates. However, for large samples, computational issues associated with the three‐way (exporter‐time, importer‐time, and country pair) fixed effects currently recommended in the gravity literature have heretofore limited the choice of estimator, leaving an important methodological gap. To address this gap, we introduce an iterative poisson pseudo‐maximum likelihood (PPML) estimation procedure that facilitates the inclusion of these fixed effects for large data sets and also allows for correlated errors across countries and time. When applied to a comprehensive sample with more than 200 countries trading over 65 years, these innovations flip the conclusions of an otherwise rigorously specified linear model. Most importantly, our estimates for both the overall CU effect and the Euro effect specifically are economically small and statistically insignificant. We also document that linear and PPML estimates of the Euro effect increasingly diverge as the sample size grows.
货币联盟与贸易:具有高维固定效应的PPML再评估
最近关于货币联盟对贸易的影响的工作强调,为了获得可靠的估计,必须使用许多国家和年份。然而,对于大样本,目前重力文献中推荐的与三向(出口国时间、进口国时间和国家对)固定效应相关的计算问题迄今为止限制了估计量的选择,留下了重要的方法学空白。为了解决这一差距,我们引入了一种迭代泊松伪极大似然(PPML)估计程序,该程序有助于将这些固定效应纳入大型数据集,并允许跨国家和时间的相关误差。当应用于200多个贸易超过65年的国家的综合样本时,这些创新颠覆了严格指定的线性模型的结论。最重要的是,我们对总体铜效应和欧元效应的估计在经济上很小,在统计上也不显著。我们还证明,随着样本量的增加,欧元效应的线性和PPML估计越来越偏离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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