821. Inference in instrumental variables models with heteroskedasticity and many instruments

Working paper n.821 Febbraio 2020 (versione aggiornata del WP 761)

Federico Crudu

DEPS, USiena

Giovanni Mellace

University of Southern Denmark

Zsolt Sándor

Sapientia Hungarian University of Transilvania

Abstract

This paper proposes novel inference procedures for instrumental variable models in the presence of many, potentially weak instruments that are robust to the presence of heteroskedasticity. First, we provide an Anderson-Rubin-type test for the entire parameter vector that is valid under assumptions weaker than previously proposed Anderson-Rubin-type tests. Second, we consider the case of testing a subset of para- meters under the assumption that a consistent estimator for the parameters not under test exists. We show that under the null the proposed statistics have Gaussian limiting distributions and derive alternative chi square approximations. An extensive simulation study shows the competitive finite sample properties in terms of size and power of our procedures. Finally, we provide an empirical application using college proximity instruments to estimate the returns to education.

Keywords

Instrumental variables, heteroskedasticity, many instruments, jackknife, inference

Jel codes

C12, C13, C23