In testing of hypothesis, the robustness of the tests is an important concern. Generally, the maximum likelihood-based tests are most efficient under standard regularity conditions, but they are highly non-robust even under small deviations from the assumed conditions. In this paper, we have proposed generalized Wald-type tests based on minimum density power divergence estimators for parametric hypotheses. This method avoids the use of nonparametric density estimation and the bandwidth selection. The trade-off between efficiency and robustness is controlled by a tuning parameter β. The asymptotic distributions of the test statistics are chi-square with appropriate degrees of freedom. The performance of the proposed tests is explored through...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
<div><p>The density power divergence (DPD) measure, defined in terms of a single parameter <i>α</i>,...
Under the maximum likelihood framework, three asymptotic overall tests have been well developed in g...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
The Rao’s score, Wald and likelihood ratio tests are the most common procedures for testing hypothes...
Zhang (2019) presented a general estimation approach based on the Gaussian distribution for general ...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
The most popular hypothesis testing procedure, the likelihood ratio test, is known to be highly non-...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
We introduce a new family of Wald-type tests, based on minimum Rényi pseudodistance estimators, for ...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
We introduce a new family of Wald-type tests, based on minimum Rényi pseudodistance estimators, for ...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
<div><p>The density power divergence (DPD) measure, defined in terms of a single parameter <i>α</i>,...
Under the maximum likelihood framework, three asymptotic overall tests have been well developed in g...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
The Rao’s score, Wald and likelihood ratio tests are the most common procedures for testing hypothes...
Zhang (2019) presented a general estimation approach based on the Gaussian distribution for general ...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
The most popular hypothesis testing procedure, the likelihood ratio test, is known to be highly non-...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
We introduce a new family of Wald-type tests, based on minimum Rényi pseudodistance estimators, for ...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
We introduce a new family of Wald-type tests, based on minimum Rényi pseudodistance estimators, for ...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
<div><p>The density power divergence (DPD) measure, defined in terms of a single parameter <i>α</i>,...
Under the maximum likelihood framework, three asymptotic overall tests have been well developed in g...