There are hypothesis testing problems for (nonlinear) functions of parameters against functional ordered alternatives for which a reduction to a conventional order-restricted hypothesis testing problem may not be feasible. While such problems can be handled in an asymptotic setup, among the available choices, it is shown that the union-intersection principle may have certain advantages over the likelihood principle or its ramifications. An application to a genomic model is also considered
AbstractIn an exponential family of distributions, the problem of testing for homogeneity of a set o...
AbstractIn a general multiparameter setup, this paper proves an optimality property of Rao's test, i...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
AbstractThere are hypothesis testing problems for (nonlinear) functions of parameters against functi...
AbstractThere are hypothesis testing problems for (nonlinear) functions of parameters against functi...
summary:The problem of testing hypothesis under which the observations are independent, identically ...
For some mixed models (involving both stochastic and nonstochastic predictors), a general class of p...
For some mixed models (involving both stochastic and nonstochastic predictors), a general class of p...
summary:The problem of testing hypothesis under which the observations are independent, identically ...
AbstractFor some mixed models (involving both stochastic and nonstochastic predictors), a general cl...
The paper studies the asymptotic efficiency and robustness of hypothesis tests when models of intere...
The paper studies the asymptotic efficiency and robustness of hypothesis tests when models of intere...
Let (x, z) be a pair of random vectors. We construct a new “smoothed” empirical likelihood based tes...
We consider tests of hypotheses when the parameters are not identifiable under the null in semiparam...
We consider tests of hypotheses when the parameters are not identifiable under the null in semiparam...
AbstractIn an exponential family of distributions, the problem of testing for homogeneity of a set o...
AbstractIn a general multiparameter setup, this paper proves an optimality property of Rao's test, i...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
AbstractThere are hypothesis testing problems for (nonlinear) functions of parameters against functi...
AbstractThere are hypothesis testing problems for (nonlinear) functions of parameters against functi...
summary:The problem of testing hypothesis under which the observations are independent, identically ...
For some mixed models (involving both stochastic and nonstochastic predictors), a general class of p...
For some mixed models (involving both stochastic and nonstochastic predictors), a general class of p...
summary:The problem of testing hypothesis under which the observations are independent, identically ...
AbstractFor some mixed models (involving both stochastic and nonstochastic predictors), a general cl...
The paper studies the asymptotic efficiency and robustness of hypothesis tests when models of intere...
The paper studies the asymptotic efficiency and robustness of hypothesis tests when models of intere...
Let (x, z) be a pair of random vectors. We construct a new “smoothed” empirical likelihood based tes...
We consider tests of hypotheses when the parameters are not identifiable under the null in semiparam...
We consider tests of hypotheses when the parameters are not identifiable under the null in semiparam...
AbstractIn an exponential family of distributions, the problem of testing for homogeneity of a set o...
AbstractIn a general multiparameter setup, this paper proves an optimality property of Rao's test, i...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...