Working paper

Non Parametric Classes for Identification in Random Coefficients Models when Regressors have Limited Variation

Christophe Gaillac, and Eric Gautier

Abstract

This paper studies point identification of the distribution of the coefficients in some random coefficients models with exogenous regressors when their support is a proper subset, possibly discrete but countable. We exhibit trade-offs between restrictions on the distribution of the random coefficients and the support of the regressors. We consider linear models including those with nonlinear transforms of a baseline regressor, with an infinite number of regressors and deconvolution, the binary choice model, and panel data models such as single-index panel data models and an extension of the Kotlarski lemma.

Keywords

Identification; Random Coefficients; Quasi-analyticity; Deconvolution;

Reference

Christophe Gaillac, and Eric Gautier, Non Parametric Classes for Identification in Random Coefficients Models when Regressors have Limited Variation, TSE Working Paper, n. 21-1218, May 2021.

See also

Published in

TSE Working Paper, n. 21-1218, May 2021