In this paper, we are concerned with two common and related problems for generalized varying-coefficient models, variable selection and constant coefficient identification. Starting with a specification of generalized varying-coefficient models assuming possible nonlinear interactions between the index variable and all other predictors, we propose a polynomial-spline based procedure that simultaneously eliminates irrelevant predictors and identifies predictors that do not interact with the index variable. Our approach is based on a double-penalization strategy where two penalty functions are used for these two related purposes respectively, in a single functional. In a “large p, small n” setting, we demonstrate the convergence rates of the ...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
This paper considers estimation and inference for varying-coefficient models with nonstationary regr...
As spatial correlation and heterogeneity often coincide in the data, we propose a spatial single-ind...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
International audienceIn this article, we consider nonparametric smoothing and variable selection in...
In this paper, we consider the problem of simultaneous variable selection and estimation for varying...
In this paper we propose a forward variable selection procedure for feature screening in ultra-high ...
Abstract: Varying coefficient models have been widely used in longitudinal data analysis, nonlinear ...
We propose the penalized estimator with the smoothly clipped absolute deviation (SCAD) penalty for v...
Nonparametric varying-coefficient models are commonly used for analyzing data measured repeatedly ov...
Semiparametric generalized varying coefficient partially linear models with longitudinal data arise ...
This paper is concerned with the statistical inference of partially linear varying coefficient dynam...
The varying coefficient model is a potent dimension reduction tool for nonparametric modeling and ha...
Abstract: A flexible nonparametric regression model is considered in which the response de-pends lin...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
This paper considers estimation and inference for varying-coefficient models with nonstationary regr...
As spatial correlation and heterogeneity often coincide in the data, we propose a spatial single-ind...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
In this paper, we consider the problem of variable selection for high-dimensional generalized varyin...
International audienceIn this article, we consider nonparametric smoothing and variable selection in...
In this paper, we consider the problem of simultaneous variable selection and estimation for varying...
In this paper we propose a forward variable selection procedure for feature screening in ultra-high ...
Abstract: Varying coefficient models have been widely used in longitudinal data analysis, nonlinear ...
We propose the penalized estimator with the smoothly clipped absolute deviation (SCAD) penalty for v...
Nonparametric varying-coefficient models are commonly used for analyzing data measured repeatedly ov...
Semiparametric generalized varying coefficient partially linear models with longitudinal data arise ...
This paper is concerned with the statistical inference of partially linear varying coefficient dynam...
The varying coefficient model is a potent dimension reduction tool for nonparametric modeling and ha...
Abstract: A flexible nonparametric regression model is considered in which the response de-pends lin...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
This paper considers estimation and inference for varying-coefficient models with nonstationary regr...
As spatial correlation and heterogeneity often coincide in the data, we propose a spatial single-ind...