International audienceIn this article, we consider nonparametric smoothing and variable selection in varying-coefficient models. Varying-coefficient models are commonly used for analyzing the time-dependent effects of covariates on responses measured repeatedly (such as longitudinal data). We present the P-spline estimator in this context and show its estimation consistency for a diverging number of knots (or B-spline basis functions). The combination of P-splines with nonnegative garrote (which is a variable selection method) leads to good estimation and variable selection. Moreover, we consider APSO (additive P-spline selection operator), which combines a P-spline penalty with a regularization penalty, and show its estimation and variable...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
We consider nonparametric estimation of coefficient functions in a varying coefficient model of the ...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
International audienceThis article extends the nonnegative garrote method to a component selection m...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
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...
The varying coefficient model is a potent dimension reduction tool for nonparametric modeling and ha...
We propose a new method for model selection and model fitting in nonparametric regression models, in...
This paper considers estimation and inference for varying-coefficient models with nonstationary regr...
Graduation date: 2014We consider two semiparametric regression models for data analysis, the stochas...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
We consider nonparametric estimation of coefficient functions in a varying coefficient model of the ...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
International audienceThis article extends the nonnegative garrote method to a component selection m...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
In this paper, we are concerned with two common and related problems for generalized varying-coeffic...
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...
The varying coefficient model is a potent dimension reduction tool for nonparametric modeling and ha...
We propose a new method for model selection and model fitting in nonparametric regression models, in...
This paper considers estimation and inference for varying-coefficient models with nonstationary regr...
Graduation date: 2014We consider two semiparametric regression models for data analysis, the stochas...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...
We consider nonparametric estimation of coefficient functions in a varying coefficient model of the ...
Varying-coefficient models provide a flexible framework for semi- and nonparametric generalized regr...