Hjort & Claeskens (2003) developed an asymptotic theory for model selection, model averaging and subsequent inference using likelihood methods in parametric models, along with associated confidence statements. In this article, we consider a semiparametric version of this problem, wherein the likelihood depends on parameters and an unknown function, and model selection/averaging is to be applied to the parametric parts of the model. We show that all the results of Hjort & Claeskens hold in the semiparametric context, if the Fisher information matrix for parametric models is replaced by the semiparametric information bound for semiparametric models, and if maximum likelihood estimators for parametric models are replaced by semiparametric effi...
We establish a general asymptotic theory for nonparametric maximum likelihood estimation in semipara...
Although model selection is routinely used in practice nowadays, little is known about its precise e...
Profile likelihood is a popular method of estimation in the presence of a nuisance parameter. It is ...
Recently, Hjort and Claeskens (2003) developed an asymptotic theory for model selection, model avera...
Plug-in estimation and corresponding refinements involving penalisation have been considered in vari...
A semi parametric profile likelihood method is proposed for estimation of sample selection models. ...
AbstractSuppose that independent observations come from an unspecified unknown distribution. Then we...
Ignoring the model selection step in inference after selection is harmful. This paper studies the as...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/90945/1/observed_information_semi-param...
Varying-coefficient partially linear models are frequently used in statistical modeling. Yet, their...
This article considers semiparametric estimation of discrete choice models. The estimation methods a...
This paper presents recent developments in model selection and model averaging for parametric and no...
In this paper, we are concerned with how to select significant variables in semiparametric modeling....
In reading the two articles written by Hjort and Claeskens, readers will � nd several important and ...
Ignoring the model selection step in inference after selection is harmful. This paper studies the as...
We establish a general asymptotic theory for nonparametric maximum likelihood estimation in semipara...
Although model selection is routinely used in practice nowadays, little is known about its precise e...
Profile likelihood is a popular method of estimation in the presence of a nuisance parameter. It is ...
Recently, Hjort and Claeskens (2003) developed an asymptotic theory for model selection, model avera...
Plug-in estimation and corresponding refinements involving penalisation have been considered in vari...
A semi parametric profile likelihood method is proposed for estimation of sample selection models. ...
AbstractSuppose that independent observations come from an unspecified unknown distribution. Then we...
Ignoring the model selection step in inference after selection is harmful. This paper studies the as...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/90945/1/observed_information_semi-param...
Varying-coefficient partially linear models are frequently used in statistical modeling. Yet, their...
This article considers semiparametric estimation of discrete choice models. The estimation methods a...
This paper presents recent developments in model selection and model averaging for parametric and no...
In this paper, we are concerned with how to select significant variables in semiparametric modeling....
In reading the two articles written by Hjort and Claeskens, readers will � nd several important and ...
Ignoring the model selection step in inference after selection is harmful. This paper studies the as...
We establish a general asymptotic theory for nonparametric maximum likelihood estimation in semipara...
Although model selection is routinely used in practice nowadays, little is known about its precise e...
Profile likelihood is a popular method of estimation in the presence of a nuisance parameter. It is ...