This paper introduces and analyzes a stochastic search method for parameter estimation in linear regression models in the spirit of Beran and Millar [Ann. Statist. 15(3) (1987) 1131–1154]. The idea is to generate a random finite subset of a parameter space which will automatically contain points which are very close to an unknown true parameter. The motivation for this procedure comes from recent work of Dümbgen et al. [Ann. Statist. 39(2) (2011) 702–730] on regression models with log-concave error distributions
. This paper surveys the theoretical and computational development of the restricted maximum likelih...
The article considers the problem of estimating linear parameters in stochastic regression models wi...
We propose a two-step projection based Lasso procedure for estimating (possibly nonlinear) models th...
This paper introduces and analyzes a stochastic search method for parameter estimation in linear reg...
We develop a Markov chain Monte Carlo algorithm, based on 'stochastic search variable selection' (Ge...
It is well known that when the input variables of the linear regression model are subject to noise c...
In this paper we consider model selection problem using samples of small or moderate size where each...
Algoritms of the parametrical estimation in non-linear non-stationary regression models with the unc...
With advanced capability in data collection, applications of linear regression analysis now often in...
This paper develops methods for stochastic search variable selection (currently popular with regress...
International audienceWe derive a stochastic search procedure for parameter optimization from two fi...
This paper develops methods for stochastic search variable selection (currently popular with regress...
The author gives an algorithm to search the struc-ture of a stochastic models with hidden variable. ...
Many researchers have studied restricted estimation in the context of exact and stochastic restricti...
We investigate the classical stepwise forward and backward search methods for selecting sparse model...
. This paper surveys the theoretical and computational development of the restricted maximum likelih...
The article considers the problem of estimating linear parameters in stochastic regression models wi...
We propose a two-step projection based Lasso procedure for estimating (possibly nonlinear) models th...
This paper introduces and analyzes a stochastic search method for parameter estimation in linear reg...
We develop a Markov chain Monte Carlo algorithm, based on 'stochastic search variable selection' (Ge...
It is well known that when the input variables of the linear regression model are subject to noise c...
In this paper we consider model selection problem using samples of small or moderate size where each...
Algoritms of the parametrical estimation in non-linear non-stationary regression models with the unc...
With advanced capability in data collection, applications of linear regression analysis now often in...
This paper develops methods for stochastic search variable selection (currently popular with regress...
International audienceWe derive a stochastic search procedure for parameter optimization from two fi...
This paper develops methods for stochastic search variable selection (currently popular with regress...
The author gives an algorithm to search the struc-ture of a stochastic models with hidden variable. ...
Many researchers have studied restricted estimation in the context of exact and stochastic restricti...
We investigate the classical stepwise forward and backward search methods for selecting sparse model...
. This paper surveys the theoretical and computational development of the restricted maximum likelih...
The article considers the problem of estimating linear parameters in stochastic regression models wi...
We propose a two-step projection based Lasso procedure for estimating (possibly nonlinear) models th...