Artigo em revista científica Q2
Heteroskedasticity testing through a comparison of Wald statistics
José Murteira (Murteira, J. M. R.); Esmeralda A. Ramalho (Ramalho, E. A.); Joaquim Ramalho (Ramalho, J. J. S.);
Título Revista
Portuguese Economic Journal
Ano (publicação definitiva)
2013
Língua
Inglês
País
Alemanha
Mais Informação
Web of Science®

N.º de citações: 3

(Última verificação: 2025-12-12 12:11)

Ver o registo na Web of Science®


: 0.3
Scopus

N.º de citações: 1

(Última verificação: 2025-12-05 23:28)

Ver o registo na Scopus


: 0.1
Google Scholar

N.º de citações: 7

(Última verificação: 2025-12-05 16:04)

Ver o registo no Google Scholar

Esta publicação não está indexada no Overton

Abstract/Resumo
This paper shows that a test for heteroskedasticity within the context of classical linear regression can be based on the difference between Wald statistics in heteroskedasticity-robust and nonrobust forms. The test is asymptotically distributed under the null hypothesis of homoskedasticity as chi-squared with one degree of freedom. The power of the test is sensitive to the choice of parametric restriction used by the Wald statistics, so the supremum of a range of individual test statistics is proposed. Two versions of a supremum-based test are considered: the first version does not have a known asymptotic null distribution, so the bootstrap is employed to approximate its empirical distribution. The second version has a known asymptotic distribution and, in some cases, is asymptotically pivotal under the null. A simulation study illustrates the use and finite-sample performance of both versions of the test. In this study, the bootstrap is found to provide better size control than asymptotic critical values, namely with heavy-tailed, asymmetric distributions of the covariates. In addition, the use of well-known modifications of the heteroskedasticity consistent covariance matrix estimator of OLS coefficients is also found to benefit the tests’ overall behaviour.
Agradecimentos/Acknowledgements
--
Palavras-chave
Heteroskedasticity testing,White test,Wald test,Supremum
  • Economia e Gestão - Ciências Sociais