Article

Encompassing Tests for Nonparametric Regressions

Elia Lapenta, and Pascal Lavergne

Abstract

We set up a formal framework to characterize encompassing of nonparametric models through the distance. We contrast it to previous literature on the comparison of nonparametric regression models. We then develop testing procedures for the encompassing hypothesis that are fully nonparametric. Our test statistics depend on kernel regression, raising the issue of bandwidth’s choice. We investigate two alternative approaches to obtain a “small bias property” for our test statistics. We show the validity of a wild bootstrap method. We empirically study the use of a data-driven bandwidth and illustrate the attractive features of our tests for small and moderate samples.

Replaces

Elia Lapenta, and Pascal Lavergne, Encompassing Tests for Nonparametric Regressions, TSE Working Paper, n. 22-1332, May 2022.

Reference

Elia Lapenta, and Pascal Lavergne, Encompassing Tests for Nonparametric Regressions, Econometric Theory, 2024, pp. 1–30, forthcoming.

Published in

Econometric Theory, 2024, pp. 1–30, forthcoming