AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equations containing unknown functions, which can be applied for various semiparametric models. The proposed method is based on the methods of conditional empirical likelihood and penalization. Thus, our estimator is called the penalized empirical likelihood (PEL) estimator. For the whole parameter including infinite-dimensional unknown functions, we derive the consistency and a convergence rate of the PEL estimator. Furthermore, for the finite-dimensional parametric component, we show the asymptotic normality and efficiency of the PEL estimator. We illustrate the theory by three examples. Simulation results show reasonable finite sample properties...
In this thesis, we construct improved estimates of linear functionals of a probability measure with ...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
We provide Monte Carlo evidence on the finite-sample behavior of the conditional empirical likelihoo...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
AbstractMany statistical models, e.g. regression models, can be viewed as conditional moment restric...
This paper proposes an empirical likelihood-based estimation method for semiparametric conditional m...
For semi/nonparametric conditional moment models containing unknown parametric components (theta) an...
This paper studies nonparametric estimation of conditional moment models in which the residual funct...
This paper studies nonparametric estimation of conditional moment models in which the generalized re...
Classic Estimating Equations (CEE) were first introduced by Godambe and have been widely used under ...
AbstractIn this paper, we investigate the empirical likelihood for constructing a confidence region ...
AbstractSemiparametric single-index regression involves an unknown finite-dimensional parameter and ...
AbstractWe consider the asymptotic analysis of penalized likelihood type estimators for generalized ...
We provide Monte Carlo evidence on the finite sample behavior of the conditional empirical likelihoo...
This paper considers semiparametric efficient estimation of conditional moment models with possibly ...
In this thesis, we construct improved estimates of linear functionals of a probability measure with ...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
We provide Monte Carlo evidence on the finite-sample behavior of the conditional empirical likelihoo...
AbstractWe propose an empirical likelihood-based estimation method for conditional estimating equati...
AbstractMany statistical models, e.g. regression models, can be viewed as conditional moment restric...
This paper proposes an empirical likelihood-based estimation method for semiparametric conditional m...
For semi/nonparametric conditional moment models containing unknown parametric components (theta) an...
This paper studies nonparametric estimation of conditional moment models in which the residual funct...
This paper studies nonparametric estimation of conditional moment models in which the generalized re...
Classic Estimating Equations (CEE) were first introduced by Godambe and have been widely used under ...
AbstractIn this paper, we investigate the empirical likelihood for constructing a confidence region ...
AbstractSemiparametric single-index regression involves an unknown finite-dimensional parameter and ...
AbstractWe consider the asymptotic analysis of penalized likelihood type estimators for generalized ...
We provide Monte Carlo evidence on the finite sample behavior of the conditional empirical likelihoo...
This paper considers semiparametric efficient estimation of conditional moment models with possibly ...
In this thesis, we construct improved estimates of linear functionals of a probability measure with ...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
We provide Monte Carlo evidence on the finite-sample behavior of the conditional empirical likelihoo...