General Trimmed Estimation: Robust Approach to Nonlinear and Limited Dependent Variable Models

CentER Discussion Paper No. 2007-65 (Revised version of CentER Discussion Paper No. 2007-01, December 2006)

42 Pages Posted: 21 Feb 2005

See all articles by Pavel Cizek

Pavel Cizek

Tilburg University - Department of Econometrics & Operations Research

Date Written: August 2007

Abstract

High breakdown-point regression estimators protect against large errors and data contamination. We generalize the concept of trimming used by many of these robust estimators, such as the least trimmed squares and maximum trimmed likelihood, and propose a general trimmed estimator, which renders robust estimators applicable far beyond the standard (non)linear regression models. We derive here the consistency and asymptotic distribution of the proposed general trimmed estimator under mild B-mixing conditions and demonstrate its applicability in nonlinear regression and limited dependent variable models.

Keywords: asymptotic normality, regression, robust estimation, trimming

JEL Classification: C13, C20, C24, C25

Suggested Citation

Cizek, Pavel, General Trimmed Estimation: Robust Approach to Nonlinear and Limited Dependent Variable Models (August 2007). CentER Discussion Paper No. 2007-65 (Revised version of CentER Discussion Paper No. 2007-01, December 2006), Available at SSRN: https://ssrn.com/abstract=670124 or http://dx.doi.org/10.2139/ssrn.670124

Pavel Cizek (Contact Author)

Tilburg University - Department of Econometrics & Operations Research ( email )

Tilburg, 5000 LE
Netherlands