The robustness properties of conditional normal-theory procedures of inference for a location parameter are considered; in particular, a robust conditional density is proposed to be used instead of the classical methods based on the assumption of normality. The new density is conditional on a robust ancillary and its properties are studied in comparison to the exact conditional density but also under slight violations of the normal model assumption
conditional inference; Gram-Charlier approximations; importance sampling. This paper considers a cla...
We consider robust methods of likelihood and frequentist inference for the nonlinear parameter, say ...
Real-world data sets may be described in terms similar to trauma cases- ‘messy’ with ‘high morbidity...
The robustness properties of conditional normal-theory procedures of inference for a location parame...
Let y, ,..., Yn denote independent real-valued observations, each distributed accord-ing to a densit...
This article studies the local robustness of estimators and tests for the conditional location and s...
We consider the Bayesian estimation of a location parameter θ based on one observation x from a univ...
In this paper we define a robust conditional location functional without requiring any moment condit...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
The aim of this contribution is to derive a robust approximate conditional procedure used to elimina...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
We study the problem of performing statistical inference based on robust estimates when the distrib...
This thesis was submitted for the degree of Doctor of Philosophy in the Department of Statistics, Un...
conditional inference; Gram-Charlier approximations; importance sampling. This paper considers a cla...
We consider robust methods of likelihood and frequentist inference for the nonlinear parameter, say ...
Real-world data sets may be described in terms similar to trauma cases- ‘messy’ with ‘high morbidity...
The robustness properties of conditional normal-theory procedures of inference for a location parame...
Let y, ,..., Yn denote independent real-valued observations, each distributed accord-ing to a densit...
This article studies the local robustness of estimators and tests for the conditional location and s...
We consider the Bayesian estimation of a location parameter θ based on one observation x from a univ...
In this paper we define a robust conditional location functional without requiring any moment condit...
AbstractIn this paper we define a robust conditional location functional without requiring any momen...
AbstractA robust estimator of the regression function is proposed combining kernel methods as introd...
The aim of this contribution is to derive a robust approximate conditional procedure used to elimina...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
The aim of this contribution is to investigate the stability of approximate conditional procedures u...
We study the problem of performing statistical inference based on robust estimates when the distrib...
This thesis was submitted for the degree of Doctor of Philosophy in the Department of Statistics, Un...
conditional inference; Gram-Charlier approximations; importance sampling. This paper considers a cla...
We consider robust methods of likelihood and frequentist inference for the nonlinear parameter, say ...
Real-world data sets may be described in terms similar to trauma cases- ‘messy’ with ‘high morbidity...