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 dis...
This study explores the performance of several two-stage procedures for testing ordinary least-squar...
This paper constructs tests for heteroskedasticity in one-way error components models, in line with ...
In the present paper a family of bivariate distributions characterized by standardized symmetric con...
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...
In this paper we propose a testing technique for multivariate heteroscedasticity, which is expressed...
Several tests for heteroskedasticity in linear regression models are examined. Asymptoticrobustness ...
An asymptotic test for heteroskedasticity has been developed. The test does not rely on any assumpti...
The quite general test for heteroskedasticity presented here regresses the absolute values of the re...
This paper proposes a new test statistic to deter the presence of heteroskedasticity. The proposed t...
Journal of Econometrics 122 Dufour, Khalaf, Bernard and GenestAs shown by the results of Dufour, Kha...
Title: Testing heteroscedasticity Author: Mária Špaková Department: Department of Probability and Ma...
Two, recently proposed tests for heteroscedasticity are examined. Under certain conditions and a mod...
We show that the standard consistent test for testing the null of conditional homoskedasticity (agai...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
This study explores the performance of several two-stage procedures for testing ordinary least-squar...
This paper constructs tests for heteroskedasticity in one-way error components models, in line with ...
In the present paper a family of bivariate distributions characterized by standardized symmetric con...
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...
In this paper we propose a testing technique for multivariate heteroscedasticity, which is expressed...
Several tests for heteroskedasticity in linear regression models are examined. Asymptoticrobustness ...
An asymptotic test for heteroskedasticity has been developed. The test does not rely on any assumpti...
The quite general test for heteroskedasticity presented here regresses the absolute values of the re...
This paper proposes a new test statistic to deter the presence of heteroskedasticity. The proposed t...
Journal of Econometrics 122 Dufour, Khalaf, Bernard and GenestAs shown by the results of Dufour, Kha...
Title: Testing heteroscedasticity Author: Mária Špaková Department: Department of Probability and Ma...
Two, recently proposed tests for heteroscedasticity are examined. Under certain conditions and a mod...
We show that the standard consistent test for testing the null of conditional homoskedasticity (agai...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
This study explores the performance of several two-stage procedures for testing ordinary least-squar...
This paper constructs tests for heteroskedasticity in one-way error components models, in line with ...
In the present paper a family of bivariate distributions characterized by standardized symmetric con...