By using the empirical likelihood (EL), we consider the construction of pointwise confidence intervals (CIs) for nonparametric nonlinear nonstationary regression models with nonlinear nonstationary heterogeneous errors. It is well known that the EL-based CI has attractive properties such as data dependency and automatic studentization in cross-sectional and weak-dependence models. We extend EL theory to the nonparametric nonlinear nonstationary regression model and show that the log-EL ratio converges to a chi-squared random variable with one degree of freedom. This means that Wilks' theorem holds even if the covariate follows a nonstationary process. We also conduct empirical analysis of Japan's inverse money demand to demonstrate the data...
This paper explores nonparametric estimation, inference, and specification testing in a nonlinear co...
In this paper, we discuss the construction of the confidence intervals for the regression vector [be...
AbstractIn this paper, we discuss the construction of the confidence intervals for the regression ve...
We consider the problem of constructing confidence intervals for nonparametric functional data analy...
International audienceA nonlinear model with response variables missing at random is studied. In ord...
We consider construction of two-sided nonparametric confidence intervals in a smooth function model ...
The empirical likelihood method is a reliable data analysis tool in all statistical areas for its no...
Within this PhD research the focus was on estimation and inference method for economic panel data th...
AbstractNonparametric versions of Wilks′ theorem are proved for empirical likelihood estimators of s...
Empirical Likelihood (EL) method introduced by Owen (1988) is a widely used nonparametric tool for c...
A major difficulty in applying a measurement error model is that one is required to have additional ...
An empirical likelihood test is proposed for parameters of models defined by conditional moment rest...
In this paper the empirical likelihood method due to Owen (1988, Biometrika, 75, 237-249) is applied...
Following an idea by Jing et al. (2005), this paper combines the empirical likelihood for the mean f...
In this paper, we look for new opportunities that can be exploited using some of the recent developm...
This paper explores nonparametric estimation, inference, and specification testing in a nonlinear co...
In this paper, we discuss the construction of the confidence intervals for the regression vector [be...
AbstractIn this paper, we discuss the construction of the confidence intervals for the regression ve...
We consider the problem of constructing confidence intervals for nonparametric functional data analy...
International audienceA nonlinear model with response variables missing at random is studied. In ord...
We consider construction of two-sided nonparametric confidence intervals in a smooth function model ...
The empirical likelihood method is a reliable data analysis tool in all statistical areas for its no...
Within this PhD research the focus was on estimation and inference method for economic panel data th...
AbstractNonparametric versions of Wilks′ theorem are proved for empirical likelihood estimators of s...
Empirical Likelihood (EL) method introduced by Owen (1988) is a widely used nonparametric tool for c...
A major difficulty in applying a measurement error model is that one is required to have additional ...
An empirical likelihood test is proposed for parameters of models defined by conditional moment rest...
In this paper the empirical likelihood method due to Owen (1988, Biometrika, 75, 237-249) is applied...
Following an idea by Jing et al. (2005), this paper combines the empirical likelihood for the mean f...
In this paper, we look for new opportunities that can be exploited using some of the recent developm...
This paper explores nonparametric estimation, inference, and specification testing in a nonlinear co...
In this paper, we discuss the construction of the confidence intervals for the regression vector [be...
AbstractIn this paper, we discuss the construction of the confidence intervals for the regression ve...