Tests for heteroskedasticity in linear regressions are typically based on asymptotic approximations. We show that the size of such tests can be perfectly controlled in finite samples through Monte Carlo test techniques, with both Gaussian and non-Gaussian (heavy-tailed) disturbance distributions. The procedures studied include standard heteroskedasticity tests [e.g., Glejser, Bartlett, Cochran, Hartley, Breusch-Pagan-Godfrey, White, Szroeter] as well as tests for ARCH-type heteroskedasticity. Sup-type and combined tests are also proposed to allow for unknown breakpoints in the variance. The fact that the proposed procedures achieve size control and have good power is demonstrated in a Monte Carlo simulation
It is remarkably easy to test for structural change, of the type that the classic F or “Chow ” test ...
We provide simulation and theoretical results concerning the finite-sample theory of quasi-maximum-l...
We consider inference in linear regression models that is robust to heteroskedasticity and the prese...
Engle's (1982) ARCH-LM test is the standard test to detect autoregressive conditional heteroscedasti...
Journal of Econometrics 122 Dufour, Khalaf, Bernard and GenestAs shown by the results of Dufour, Kha...
An asymptotic test for heteroskedasticity has been developed. The test does not rely on any assumpti...
1 Centre de recherche et développement en économique (C.R.D.E.) and Département de sciences économiq...
This paper shows that a test for heteroskedasticity within the context of classical linear regressio...
This paper shows that a test for heteroskedasticity within the context of classical linear regressio...
Several tests for heteroskedasticity in linear regression models are examined. Asymptoticrobustness ...
In the context of multivariate linear regression (MLR) models, it is well known that commonly employ...
In this paper, we use Monte Carlo (MC) testing techniques for testing linearity against smooth trans...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
Existing specification tests for conditional heteroskedasticity are derived under the assumption tha...
We provide simulation and theoretical results concerning the finite-sample theory of quasi-maximum-l...
It is remarkably easy to test for structural change, of the type that the classic F or “Chow ” test ...
We provide simulation and theoretical results concerning the finite-sample theory of quasi-maximum-l...
We consider inference in linear regression models that is robust to heteroskedasticity and the prese...
Engle's (1982) ARCH-LM test is the standard test to detect autoregressive conditional heteroscedasti...
Journal of Econometrics 122 Dufour, Khalaf, Bernard and GenestAs shown by the results of Dufour, Kha...
An asymptotic test for heteroskedasticity has been developed. The test does not rely on any assumpti...
1 Centre de recherche et développement en économique (C.R.D.E.) and Département de sciences économiq...
This paper shows that a test for heteroskedasticity within the context of classical linear regressio...
This paper shows that a test for heteroskedasticity within the context of classical linear regressio...
Several tests for heteroskedasticity in linear regression models are examined. Asymptoticrobustness ...
In the context of multivariate linear regression (MLR) models, it is well known that commonly employ...
In this paper, we use Monte Carlo (MC) testing techniques for testing linearity against smooth trans...
International audienceIn this paper, we suggest two heteroscedasticity tests that require little kno...
Existing specification tests for conditional heteroskedasticity are derived under the assumption tha...
We provide simulation and theoretical results concerning the finite-sample theory of quasi-maximum-l...
It is remarkably easy to test for structural change, of the type that the classic F or “Chow ” test ...
We provide simulation and theoretical results concerning the finite-sample theory of quasi-maximum-l...
We consider inference in linear regression models that is robust to heteroskedasticity and the prese...