First-stage analysis for instrumental-variables quantile regression

Javier Alejo, Antonio F. Galvao, Gabriel Montes-Rojas
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Abstract

In this article, we develop a first-stage linear regression command, fsivqreg, for an instrumental-variables quantile regression (QR) model. The quantile first stage is analogous to the least-squares case, that is, a linear projection of the endogenous variables on the instruments and other exogenous covariates, with the difference that the QR case is a weighted projection. The weights are given by the conditional density function of the innovation term in the QR structural model, at a given quantile. An empirical application illustrates its implementation.
工具变量量化回归的第一阶段分析
在本文中,我们为工具变量量化回归(QR)模型开发了一个第一阶段线性回归指令 fsivqreg。量化第一阶段类似于最小二乘法,即内生变量对工具和其他外生协变量的线性投影,不同之处在于 QR 是加权投影。权重由 QR 结构模型中创新项在给定数量级上的条件密度函数给出。一个经验应用说明了它的实施。
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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