This paper studies optimal hypothesis testing for nonregular statistical models with parameter-dependent support. We consider both one-sided and two-sided hypothesis testing and develop asymptotically uniformly most powerful tests based on the likelihood ratio process. The proposed one-sided test involves randomization to achieve asymptotic size control, some tuning constant to avoid discontinuities in the limiting likelihood ratio process, and a user-specified alternative hypothetical value to achieve the asymptotic optimality. Our two-sided test becomes asymptotically uniformly most powerful without imposing further restrictions such as unbiasedness. Simulation results illustrate desirable power properties of the proposed tests
Any model is accompanied by a set of assumptions. These assumptions are based either on the underlyi...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
This paper reviews important concepts and methods that are useful for hypothesis testing. First, we ...
This paper proposes a class of optimal tests for the constancy of parameters in random coe ¢ cients ...
We consider hypothesis testing problems in which a nuisance parameter is present only under the alte...
AbstractFor some mixed models (involving both stochastic and nonstochastic predictors), a general cl...
In the context of testing the specification of a nonlinear parametric regression function, we adopt ...
We consider the problem of detecting unobserved heterogeneity, that is, the problem of testing the a...
This paper considers nonstandard hypothesis testing problems that involve a nui-sance parameter. We ...
© 2012 Dr. Muhammad Saqib ManzoorIn this dissertation, we revisit the method of Elliott and Stock (2...
There are a large number of tests for parameter instability designed for specific types of unstable ...
This paper puts the case for the inclusion of point optimal tests in the econometrician's repertoire...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
This paper considers tests which maximize the weighted average power (WAP). The focus is on determin...
This paper considers nonstandard hypothesis testing problems that involve a nuisance parameter. We e...
Any model is accompanied by a set of assumptions. These assumptions are based either on the underlyi...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
This paper reviews important concepts and methods that are useful for hypothesis testing. First, we ...
This paper proposes a class of optimal tests for the constancy of parameters in random coe ¢ cients ...
We consider hypothesis testing problems in which a nuisance parameter is present only under the alte...
AbstractFor some mixed models (involving both stochastic and nonstochastic predictors), a general cl...
In the context of testing the specification of a nonlinear parametric regression function, we adopt ...
We consider the problem of detecting unobserved heterogeneity, that is, the problem of testing the a...
This paper considers nonstandard hypothesis testing problems that involve a nui-sance parameter. We ...
© 2012 Dr. Muhammad Saqib ManzoorIn this dissertation, we revisit the method of Elliott and Stock (2...
There are a large number of tests for parameter instability designed for specific types of unstable ...
This paper puts the case for the inclusion of point optimal tests in the econometrician's repertoire...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
This paper considers tests which maximize the weighted average power (WAP). The focus is on determin...
This paper considers nonstandard hypothesis testing problems that involve a nuisance parameter. We e...
Any model is accompanied by a set of assumptions. These assumptions are based either on the underlyi...
We develop a new test of a parametric model of a conditional mean function against a nonparametric a...
This paper reviews important concepts and methods that are useful for hypothesis testing. First, we ...