We consider the problem of constructing confidence intervals for nonparametric functional data analysis using empirical likelihood. In this doubly infinite-dimensional context, we demonstrate the Wilk's phenomenon and propose a bias-corrected construction that requires neither undersmoothing nor direct bias estimation. We also extend our results to partially linear regression models involving functional data. Our numerical results demonstrate improved performance of the empirical likelihood methods over normal approximation-based methods
In this paper a simple way to obtain empirical likelihood type confidence intervals for the mean und...
Article is devoted to description and illustration of empirical likelihood methods in interval estim...
In this paper, we consider a single-index varying-coefficient model with application to longitudinal...
We consider the problem of constructing confidence intervals for nonparametric functional data analy...
The empirical likelihood method of Owen [Owen, A., 1988. Empirical likelihood ratio confidence inter...
In this paper the empirical likelihood method due to Owen (1988, Biometrika, 75, 237-249) is applied...
AbstractNonparametric versions of Wilks′ theorem are proved for empirical likelihood estimators of s...
We consider construction of two-sided nonparametric confidence intervals in a smooth function model ...
By using the empirical likelihood (EL), we consider the construction of pointwise confidence interva...
Abstract: We consider nonparametric regression in the context of functional data, that is, when a ra...
Following an idea by Jing et al. (2005), this paper combines the empirical likelihood for the mean f...
In both parametric and certain nonparametric statistical models, the empirical likelihood ratio sati...
In both parametric and certain nonparametric statistical models, the empirical likelihood ratio sati...
Empirical-likelihood-based inference for the parameters in a partially linear single-index model is ...
Article is devoted to description and illustration of empirical likelihood methods in interval estim...
In this paper a simple way to obtain empirical likelihood type confidence intervals for the mean und...
Article is devoted to description and illustration of empirical likelihood methods in interval estim...
In this paper, we consider a single-index varying-coefficient model with application to longitudinal...
We consider the problem of constructing confidence intervals for nonparametric functional data analy...
The empirical likelihood method of Owen [Owen, A., 1988. Empirical likelihood ratio confidence inter...
In this paper the empirical likelihood method due to Owen (1988, Biometrika, 75, 237-249) is applied...
AbstractNonparametric versions of Wilks′ theorem are proved for empirical likelihood estimators of s...
We consider construction of two-sided nonparametric confidence intervals in a smooth function model ...
By using the empirical likelihood (EL), we consider the construction of pointwise confidence interva...
Abstract: We consider nonparametric regression in the context of functional data, that is, when a ra...
Following an idea by Jing et al. (2005), this paper combines the empirical likelihood for the mean f...
In both parametric and certain nonparametric statistical models, the empirical likelihood ratio sati...
In both parametric and certain nonparametric statistical models, the empirical likelihood ratio sati...
Empirical-likelihood-based inference for the parameters in a partially linear single-index model is ...
Article is devoted to description and illustration of empirical likelihood methods in interval estim...
In this paper a simple way to obtain empirical likelihood type confidence intervals for the mean und...
Article is devoted to description and illustration of empirical likelihood methods in interval estim...
In this paper, we consider a single-index varying-coefficient model with application to longitudinal...