Inference on linear functionals of the latent distribution in measurement error models is considered. The issue about asymptotically efficient estimation by maximum likelihood in a convolution model with Laplace error distribution is settled in the affirmative: maximum likelihood estimators of certain linear functionals of the mixing distribution are \sqrt{n}-consistent, asymptotically normal and efficient. Asymptotic normality of a Studentized version of the maximum likelihood estimator allows to construct confidence intervals for linear functionals. Regarding maximum likelihood estimation of the mixing distribution as a data-driven choice of the a priori distribution on the mixing parameter in an empirical Bayes approach to the problem of...
In this paper we study the first-order efficiency and asymptotic normality of the maximum likelihood...
We illustrate with examples when and how maximum likelihood estimators continue to be asymptotically...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
Maximum likelihood estimation of linear functionals in the inverse problem of deconvolution is consi...
We consider estimation and confidence regions for the parameters ff and fi based on the observations...
We consider estimation and confidence regions for the parameters[alpha]and[beta]based on the observa...
We consider estimation and con dence regions for the parameters and based on the observations (X1;Y1...
In many applications, observations from some distribution of interest are contaminated with errors...
This paper considers consistent estimation of generalized linear models with covariate measurement e...
We compare the asymptotic covariance matrix of the ML estimator in a nonlinear measurement error mod...
Abstract. We analyze the asymptotic properties of estimators based on optimizing an extended least s...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
This paper is concerned with the estimation of a parameter of a stochastic process on the basis of a...
The present article considers the problem of consistent estimation in measurement error models. A li...
We study the estimation of a linear integral functional of a distribution F, using i.i.d. observati...
In this paper we study the first-order efficiency and asymptotic normality of the maximum likelihood...
We illustrate with examples when and how maximum likelihood estimators continue to be asymptotically...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
Maximum likelihood estimation of linear functionals in the inverse problem of deconvolution is consi...
We consider estimation and confidence regions for the parameters ff and fi based on the observations...
We consider estimation and confidence regions for the parameters[alpha]and[beta]based on the observa...
We consider estimation and con dence regions for the parameters and based on the observations (X1;Y1...
In many applications, observations from some distribution of interest are contaminated with errors...
This paper considers consistent estimation of generalized linear models with covariate measurement e...
We compare the asymptotic covariance matrix of the ML estimator in a nonlinear measurement error mod...
Abstract. We analyze the asymptotic properties of estimators based on optimizing an extended least s...
In completely specified models, where explicit formulae are derivable for the probabilities of obser...
This paper is concerned with the estimation of a parameter of a stochastic process on the basis of a...
The present article considers the problem of consistent estimation in measurement error models. A li...
We study the estimation of a linear integral functional of a distribution F, using i.i.d. observati...
In this paper we study the first-order efficiency and asymptotic normality of the maximum likelihood...
We illustrate with examples when and how maximum likelihood estimators continue to be asymptotically...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...