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Estimation of country-pair data models controlling for clustered errors: with international trade applications

机译:估计控制聚类错误的国家对数据模型:与国际贸易应用

摘要

We consider cross-section regression models for country-pair data, such as gravity models for trade volume between countries or models of exchange rate volatility, allowing for the presence of country-specific errors. This induces clustered errors in a nonstandard setting. OLS standard errors that ignore this clustering are greatly underestimated. Under the assumption of random country-specific effects we provide analytical results that permit more efficient GLS estimation even in settings where the number of unique country-pairs is very large. We include applications to international data on real exchange rates and on bilateral trade that provided the motivation for this paper. The results are more generally applicable to regression with paired data.
机译:我们考虑针对国家/地区数据的横截面回归模型,例如国家之间贸易量的重力模型或汇率波动模型,以允许存在特定于国家/地区的错误。在非标准设置中,这会导致聚集错误。忽略此聚类的OLS标准错误被大大低估了。在特定国家/地区随机影响的假设下,即使在独特国家/地区对的数量非常多的情况下,我们提供的分析结果也可以实现更有效的GLS估算。我们包括对实际汇率和双边贸易的国际数据的应用,这为本文提供了动力。结果更普遍适用于配对数据的回归。

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