AbstractIn this paper, we take the characteristic function approach to goodness-of-fit tests. It has several advantages over existing methods: First, unlike the popular comparison density function approach suggested in Parzen (1979), our approach is applicable to both univariate and multivariate data; Second, in the case where the null hypothesis is composite, the approach taken in this paper yields a test that is superior to tests based on empirical distribution functions such as the Cramér– von Mises test, because on the one hand the asymptotic critical values of our test are easily obtained from the standard normal distribution and are not affected byn-consistent estimation of the unknown parameters in the null hypothesis, and on the oth...
In this thesis we introduce, implement and compare several multivariate goodness-of-fit tests. First...
We propose a class of goodness–of–fit test procedures for arbitrary parametric families of circular ...
Distributional assumptions are at the core of statistical methods. Goodness-of-fit test statistics a...
AbstractIn this paper, we take the characteristic function approach to goodness-of-fit tests. It has...
The paper is devoted to multivariate goodness-of-fit ests based on kernel density estimators. Both s...
We consider goodness-of-fit testing for multivariate stable distributions. The proposed test statis...
We propose tests of fit for classes of distributions that include the Weibull, the Pareto and the Fr...
AbstractIn this paper, to test goodness of fit to any fixed distribution of errors in multivariate l...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
summary:Test procedures are constructed for testing the goodness-of-fit in parametric regression mod...
AbstractThis paper investigates a new family of statistics based on Burbea–Rao divergence for testin...
International audienceWe introduce a goodness-of-fit test for statistical models about the condition...
In this thesis two general problems concerning goodness-of- fit statistics based on the empirical di...
Bivariate count data arise in several different disciplines and the bivariate Poisson distribution i...
The use of goodness-of-fit test statistics for discrete or categorical data is widespread throughout...
In this thesis we introduce, implement and compare several multivariate goodness-of-fit tests. First...
We propose a class of goodness–of–fit test procedures for arbitrary parametric families of circular ...
Distributional assumptions are at the core of statistical methods. Goodness-of-fit test statistics a...
AbstractIn this paper, we take the characteristic function approach to goodness-of-fit tests. It has...
The paper is devoted to multivariate goodness-of-fit ests based on kernel density estimators. Both s...
We consider goodness-of-fit testing for multivariate stable distributions. The proposed test statis...
We propose tests of fit for classes of distributions that include the Weibull, the Pareto and the Fr...
AbstractIn this paper, to test goodness of fit to any fixed distribution of errors in multivariate l...
In this paper, a goodness-of-fit test for normality based on the comparison of the theoretical and e...
summary:Test procedures are constructed for testing the goodness-of-fit in parametric regression mod...
AbstractThis paper investigates a new family of statistics based on Burbea–Rao divergence for testin...
International audienceWe introduce a goodness-of-fit test for statistical models about the condition...
In this thesis two general problems concerning goodness-of- fit statistics based on the empirical di...
Bivariate count data arise in several different disciplines and the bivariate Poisson distribution i...
The use of goodness-of-fit test statistics for discrete or categorical data is widespread throughout...
In this thesis we introduce, implement and compare several multivariate goodness-of-fit tests. First...
We propose a class of goodness–of–fit test procedures for arbitrary parametric families of circular ...
Distributional assumptions are at the core of statistical methods. Goodness-of-fit test statistics a...