The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence

This paper examines the finite sample properties of structural change tests with an unknown breakpoint for the probit model in the presence of serial correlation. The combination of structural change and serial correlation renders model estimation challenging, affecting the consistency of coefficien...

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Main Authors: Chan, Felix, Pauwels, L., Wongsosaputro, J.
Format: Journal Article
Published: Elsevier Science 2013
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/23236
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author Chan, Felix
Pauwels, L.
Wongsosaputro, J.
author_facet Chan, Felix
Pauwels, L.
Wongsosaputro, J.
author_sort Chan, Felix
building Curtin Institutional Repository
collection Online Access
description This paper examines the finite sample properties of structural change tests with an unknown breakpoint for the probit model in the presence of serial correlation. The combination of structural change and serial correlation renders model estimation challenging, affecting the consistency of coefficient estimates. Although there is vast literature concerning structural change tests for linear time series models, the literature for such tests in the context of binary choice models is somewhat sparse. More importantly, the empirical literature has applied the standard tests of structural change on the discrete choice model, despite the fact that most of these tests were developed specifically for the linear regression model. Subsequently, the theoretical properties of these tests in the context of non-linear models are unknown. This includes the class of discrete choice models, such as probit and logit. The issue becomes even more complicated in the presence of serial correlation, since typical tests for structural change often require the assumption of independence in the error terms. Even when the tests allow for a weakly dependent structure in the data, their finite sample performance remains unknown.This paper conducts simulation analysis on the size of ‘supremum’ Wald, LR and LM tests for structural change in the context of the probit model with varying levels of serial correlation. It is found that the shortcomings of the tests in linear models are magnified in probit models. In particular, the tests exhibit greater size distortion for the probit model than the linear model with the same level of serial correlation. Bootstrapping is also considered as an alternative approach to obtaining critical values, and though it reduces the size distortion in finite samples, it is unable to accommodate the distortion associated with a high level of serial correlation.
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spelling curtin-20.500.11937-232362017-09-13T13:56:21Z The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence Chan, Felix Pauwels, L. Wongsosaputro, J. Binary choice Supremum test statistics Probit model Structural change This paper examines the finite sample properties of structural change tests with an unknown breakpoint for the probit model in the presence of serial correlation. The combination of structural change and serial correlation renders model estimation challenging, affecting the consistency of coefficient estimates. Although there is vast literature concerning structural change tests for linear time series models, the literature for such tests in the context of binary choice models is somewhat sparse. More importantly, the empirical literature has applied the standard tests of structural change on the discrete choice model, despite the fact that most of these tests were developed specifically for the linear regression model. Subsequently, the theoretical properties of these tests in the context of non-linear models are unknown. This includes the class of discrete choice models, such as probit and logit. The issue becomes even more complicated in the presence of serial correlation, since typical tests for structural change often require the assumption of independence in the error terms. Even when the tests allow for a weakly dependent structure in the data, their finite sample performance remains unknown.This paper conducts simulation analysis on the size of ‘supremum’ Wald, LR and LM tests for structural change in the context of the probit model with varying levels of serial correlation. It is found that the shortcomings of the tests in linear models are magnified in probit models. In particular, the tests exhibit greater size distortion for the probit model than the linear model with the same level of serial correlation. Bootstrapping is also considered as an alternative approach to obtaining critical values, and though it reduces the size distortion in finite samples, it is unable to accommodate the distortion associated with a high level of serial correlation. 2013 Journal Article http://hdl.handle.net/20.500.11937/23236 10.1016/j.matcom.2012.11.001 Elsevier Science restricted
spellingShingle Binary choice
Supremum test statistics
Probit model
Structural change
Chan, Felix
Pauwels, L.
Wongsosaputro, J.
The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence
title The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence
title_full The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence
title_fullStr The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence
title_full_unstemmed The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence
title_short The Impact of Serial Correlation on Testing For Structural Change in Binary Choice Model: Monte Carlo Evidence
title_sort impact of serial correlation on testing for structural change in binary choice model: monte carlo evidence
topic Binary choice
Supremum test statistics
Probit model
Structural change
url http://hdl.handle.net/20.500.11937/23236