Litcius/Paper detail

Smoothed instrumental variables quantile regression

David M. Kaplan

2022The Stata Journal Promoting communications on statistics and Stata62 citationsDOIOpen Access PDF

Abstract

In this article, I introduce the sivqr command, which estimates the coefficients of the instrumental variables quantile regression model introduced by Chernozhukov and Hansen (2005, Econometrica 73: 245–261). The sivqr command offers several advantages over the existing ivqreg and ivqreg2 commands for estimating this instrumental variables quantile regression model, which complements the alternative “triangular model” behind cqiv and the “local quantile treatment effect” model of ivqte. Computationally, sivqr implements the smoothed estimator of Kaplan and Sun (2017, Econometric Theory 33: 105–157), who show that smoothing improves both computation time and statistical accuracy. Standard errors are computed analytically or by Bayesian bootstrap; for nonindependent and identically distributed sampling, sivqr is compatible with bootstrap. I discuss syntax and the underlying methodology, and I compare sivqr with other commands in an example.

Topics & Concepts

Instrumental variableQuantile regressionEstimatorQuantileEconometricsSmoothingStatisticsMathematicsIndependent and identically distributed random variablesBayesian probabilityComputer scienceRandom variableStatistical Methods and InferenceAdvanced Causal Inference TechniquesMonetary Policy and Economic Impact