Empirical minimum distance lack-of-fit tests for Tobit regression models

Date

2011-08-31

Journal Title

Journal ISSN

Volume Title

Publisher

Kansas State University

Abstract

The purpose of this report is to propose and evaluate two lack-of-fit test procedures to check the adequacy of the regression functional forms in the standard Tobit regression models. It is shown that testing the null hypothesis for the standard Tobit regression models amounts testing a new equivalent null hypothesis of the classic regression models. Both procedures are constructed based on the empirical variants of a minimum distance, which measures the squared difference between a nonparametric estimator and a parametric estimator of the regression functions fitted under the null hypothesis for the new regression models. The asymptotic null distributions of the test statistics are investigated, as well as the power for some fixed alternatives and some local hypotheses. Simulation studies are conducted to assess the finite sample power performance and the robustness of the tests. Comparisons between these two test procedures are also made.

Description

Keywords

Tobit Regression Model, Empirical Minimum Distance, Consistency, Local Power

Graduation Month

December

Degree

Master of Science

Department

Department of Statistics

Major Professor

Weixing Song

Date

2011

Type

Report

Citation