We describe how to test the null hypothesis that errors from two parametrically specified regression models have the same distribution versus a general alternative. First we obtain the asymptotic properties of teststatistics derived from the difference between the two residual-based empirical distribution functions. Under the null distribution they are not asymptotically distribution free and, hence, a consistent bootstrap procedure is proposed to compute critical values. As an alternative, we describe how to perform the test with statistics based on martingale-transformed empirical processes, which are asymptotically distribution free. Some Monte Carlo experiments are performed to compare the behaviour of all statistics with moderate sampl...
Assume that (Xj , Yj ) are independent random vectors satisfying the nonparametric regression models...
For the problem of testing symmetry of the error distribution in a nonparametric regression model we...
Several nonparametric goodness-of-fit tests are based on the empirical distribution function. In the...
Abstract We describe how to test the null hypothesis that errors from two parametrically specified r...
We describe how to test the null hypothesis that errors from two parametrically specified regression...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
This study aims to compare two sets of data with each having a linear relationship between the indep...
A test for serial independence of regression errors, consistent in the direction of first order alte...
AbstractIn this paper we study the problem of testing the null hypothesis that errors from k indepen...
We propose a new test for the comparison of two regression curves, which is based on a difference of...
AbstractIn this paper, to test goodness of fit to any fixed distribution of errors in multivariate l...
In this PHD thesis, we propose a nonparametric method based on the empirical likelihood for detectin...
International audienceConsidering either two independent i.i.d. samples, or two independent samples ...
This paper considers the problem of testing the equality of two unspecified distributions. The class...
In this paper we are interested in checking whether the conditional variances are equal in k ≥ 2 lo...
Assume that (Xj , Yj ) are independent random vectors satisfying the nonparametric regression models...
For the problem of testing symmetry of the error distribution in a nonparametric regression model we...
Several nonparametric goodness-of-fit tests are based on the empirical distribution function. In the...
Abstract We describe how to test the null hypothesis that errors from two parametrically specified r...
We describe how to test the null hypothesis that errors from two parametrically specified regression...
In this paper we investigate several tests for the hypothesis of a parametric form of the error dist...
This study aims to compare two sets of data with each having a linear relationship between the indep...
A test for serial independence of regression errors, consistent in the direction of first order alte...
AbstractIn this paper we study the problem of testing the null hypothesis that errors from k indepen...
We propose a new test for the comparison of two regression curves, which is based on a difference of...
AbstractIn this paper, to test goodness of fit to any fixed distribution of errors in multivariate l...
In this PHD thesis, we propose a nonparametric method based on the empirical likelihood for detectin...
International audienceConsidering either two independent i.i.d. samples, or two independent samples ...
This paper considers the problem of testing the equality of two unspecified distributions. The class...
In this paper we are interested in checking whether the conditional variances are equal in k ≥ 2 lo...
Assume that (Xj , Yj ) are independent random vectors satisfying the nonparametric regression models...
For the problem of testing symmetry of the error distribution in a nonparametric regression model we...
Several nonparametric goodness-of-fit tests are based on the empirical distribution function. In the...