Article

One-step smoothing splines instrumental regression

Jad Beyhum, Elia Lapenta, and Pascal Lavergne

Abstract

We extend nonparametric regression smoothing splines to a context where there is endogeneity and instrumental variables are available. Unlike popular existing estimators, the resulting estimator is one-step and relies on a unique regularization parameter. We derive rates of the convergence for the estimator and its first derivative, which are uniform in the support of the endogenous variable. We also address the issue of imposing monotonicity in estimation and extend the approach to a partly linear model. Simulations confirm the good performances of our estimator compared to two-step procedures. Our method yields economically sensible results when used to estimate Engel curves.

Replaces

Jad Beyhum, Elia Lapenta, and Pascal Lavergne, One-step nonparametric instrumental regression using smoothing splines, TSE Working Paper, n. 23-1467, August 2023.

Reference

Jad Beyhum, Elia Lapenta, and Pascal Lavergne, One-step smoothing splines instrumental regression, The Econometrics Journal, 2024, forthcoming.

Published in

The Econometrics Journal, 2024, forthcoming