For the problem of testing symmetry of the error distribution in a nonparametric regression model we propose as a test statistic the difference between the two empirical distribution functions of estimated residuals and their counterparts with opposite signs. The weak convergence of the difference process to a Gaussian process is shown. The covariance structure of this process depends heavily on the density of the error distribution, and for this reason the performance of a symmetric wild bootstrap procedure is discussed in asymptotic theory and by means of a simulation study. In contrast to the available procedures the new test is also applicable under heteroscedasticity. --empirical process of residuals,testing for symmetry,nonparametric ...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Heteroskedastic errors can lead to inaccurate statistical conclusions if they are not properly hand...
For the problem of testing symmetry of the error distribution in a nonparametric regression model we...
For the problem of testing symmetry of the error distribution in a nonparametric re-gression model w...
In the classical linear regression model the problem of testing for symmetry of the error distributi...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
SIGLEAvailable from TIB Hannover: RR 8460(2003,11) / FIZ - Fachinformationszzentrum Karlsruhe / TIB ...
We propose a test for symmetry of a regression function with a bivariate predictor based on the L_2 ...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Heteroskedastic errors can lead to inaccurate statistical conclusions if they are not properly hand...
For the problem of testing symmetry of the error distribution in a nonparametric regression model we...
For the problem of testing symmetry of the error distribution in a nonparametric re-gression model w...
In the classical linear regression model the problem of testing for symmetry of the error distributi...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
We propose omnibus tests for symmetry of the conditional distribution of a time series process about...
This article proposes omnibus tests for conditional symmetry around a parametric function in a dynam...
SIGLEAvailable from TIB Hannover: RR 8460(2003,11) / FIZ - Fachinformationszzentrum Karlsruhe / TIB ...
We propose a test for symmetry of a regression function with a bivariate predictor based on the L_2 ...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Being able to formally test for symmetry hypotheses is an important topic in many fields, including ...
Heteroskedastic errors can lead to inaccurate statistical conclusions if they are not properly hand...