Discrete and multinomial analogs are defined for classical (continuous) invariant nonparametric problems of estimating the sample cumulative distribution function (sample c.d.f.) and the sample median. Admissibility of classical estimators and their analogs is investigated. In discrete (including multinomial) settings the sample c.d.f. is shown to be an admissible estimator of the population c.d.f. under the invariant weighted Cramer-von Mises loss function L1(F,F^) = ∫[(F(t)−F^(t))2/(F(t)(1−F(t)))] dF(t). Ordinary Cramer-von Mises loss--L2(F,F^)=∫[(F(t)−F^(t))2]dF(t)--is also studied. Admissibility of the best invariant estimator is investigated. (It is well known in the classical problem that the sample c.d.f. is not the best invariant e...
Consider an estimation problem in the one parameter exponential family of distributions under square...
This note is concerned with nonparanetric and semiparametric inference in regression models where re...
The purpose of this dissertation is to demonstrate the admissibility of some well-known nonparametri...
Discrete and multinomial analogs are defined for classical (continuous) invariant nonparametric prob...
Discrete and multinomial analogs are defined for classical (continuous) invariant nonparametric prob...
Consider nonparametric problems of estimating an unknown distribution function, F, under the loss L(...
For estimation problems, an interesting question is whether the maximum likelihood estimator(MLE) is...
Abstract: Consider the problem of estimation of a continuous distribution function with the LINEX lo...
AbstractThe proof of Farrell (1968. Ann. Math. Statist. 26 518–522) is adapted to the special proble...
The inadmissibility of the best affine-invariant estimators for the variance and noncentral quantile...
The inadmissibility of the best affine-invariant estimators for the variance and noncentral quantile...
AbstractConsider p independent distributions each belonging to the one parameter exponential family ...
For estimation problems, an interesting question is whether the maximum likelihood estimator(MLE) is...
We study estimation of finite population quantiles, with emphasis on estimators that are invariant u...
Questions of admissibility of statistical estimators are reduced to considerations involving differe...
Consider an estimation problem in the one parameter exponential family of distributions under square...
This note is concerned with nonparanetric and semiparametric inference in regression models where re...
The purpose of this dissertation is to demonstrate the admissibility of some well-known nonparametri...
Discrete and multinomial analogs are defined for classical (continuous) invariant nonparametric prob...
Discrete and multinomial analogs are defined for classical (continuous) invariant nonparametric prob...
Consider nonparametric problems of estimating an unknown distribution function, F, under the loss L(...
For estimation problems, an interesting question is whether the maximum likelihood estimator(MLE) is...
Abstract: Consider the problem of estimation of a continuous distribution function with the LINEX lo...
AbstractThe proof of Farrell (1968. Ann. Math. Statist. 26 518–522) is adapted to the special proble...
The inadmissibility of the best affine-invariant estimators for the variance and noncentral quantile...
The inadmissibility of the best affine-invariant estimators for the variance and noncentral quantile...
AbstractConsider p independent distributions each belonging to the one parameter exponential family ...
For estimation problems, an interesting question is whether the maximum likelihood estimator(MLE) is...
We study estimation of finite population quantiles, with emphasis on estimators that are invariant u...
Questions of admissibility of statistical estimators are reduced to considerations involving differe...
Consider an estimation problem in the one parameter exponential family of distributions under square...
This note is concerned with nonparanetric and semiparametric inference in regression models where re...
The purpose of this dissertation is to demonstrate the admissibility of some well-known nonparametri...