AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear part with varying coefficients and the nonlinear part with a single-index structure, and are hence termed as varying-coefficient single-index models. This model includes many important regression models such as single-index models, partially linear single-index models, varying-coefficient model and varying-coefficient partially linear models as special examples. In this paper, we mainly study estimating problems of the varying-coefficient vector, the nonparametric link function and the unknown parametric vector describing the single-index in the model. A stepwise approach is developed to obtain asymptotic normality estimators of the varying-coe...
Abstract: In this paper, we propose simultaneous confidence bands for the non-parametric link functi...
This study examines the varying coefficient model in tail index regression. The varying coefficient ...
A natural generalization of the well known generalized linear models is to allow only for some of th...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
In this paper, we study the estimation for a partial-linear single-index model. A two-stage estimati...
In this paper, we investigate a partially single-index varying-coefficient model, and suggest two em...
Wepropose a new estimationmethod for generalized varying coefficient models where the link function ...
In this paper, we generalize the single-index models to the scenarios with random effects. The intro...
We perform inference for the sparse and potentially high-dimensional parametric part of a partially ...
Varying-coefficient linear models arise from multivariate nonparametric regression, nonlinear time s...
Abstract: We develop a single-index volatility model in this paper. A new method is proposed to esti...
The complexity of semiparametric models poses new challenges to sta-tistical inference and model sel...
In this article, we consider semiparametric estimation in a partially linear single-index panel data...
© 2014 Royal Statistical Society. We consider heteroscedastic regression models where the mean funct...
Varying-coefficient linear models arise from multivariate nonparametric regression, nonlinear time s...
Abstract: In this paper, we propose simultaneous confidence bands for the non-parametric link functi...
This study examines the varying coefficient model in tail index regression. The varying coefficient ...
A natural generalization of the well known generalized linear models is to allow only for some of th...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
In this paper, we study the estimation for a partial-linear single-index model. A two-stage estimati...
In this paper, we investigate a partially single-index varying-coefficient model, and suggest two em...
Wepropose a new estimationmethod for generalized varying coefficient models where the link function ...
In this paper, we generalize the single-index models to the scenarios with random effects. The intro...
We perform inference for the sparse and potentially high-dimensional parametric part of a partially ...
Varying-coefficient linear models arise from multivariate nonparametric regression, nonlinear time s...
Abstract: We develop a single-index volatility model in this paper. A new method is proposed to esti...
The complexity of semiparametric models poses new challenges to sta-tistical inference and model sel...
In this article, we consider semiparametric estimation in a partially linear single-index panel data...
© 2014 Royal Statistical Society. We consider heteroscedastic regression models where the mean funct...
Varying-coefficient linear models arise from multivariate nonparametric regression, nonlinear time s...
Abstract: In this paper, we propose simultaneous confidence bands for the non-parametric link functi...
This study examines the varying coefficient model in tail index regression. The varying coefficient ...
A natural generalization of the well known generalized linear models is to allow only for some of th...