A natural generalization of the well known generalized linear models is to allow only for some of the predictors to be modeled linearly while others are modeled nonparametrically. However, this model can face the so called “curse of dimensionality” problem that can be solved by imposing a nonparametric dependence on some unknown projection of the carriers. More precisely, we assume that the observations (yi,xi,ti), 1≤i≤n, are such that ti∈ℝq, xi∈ℝp and yi|(xi,ti)∼F(⋅,μi) with μi=H(η(αTti)+xTiβ)μi=H(η(αTti)+xiTβ) , for some known distribution function F and link function H. The function η:ℝ→ℝ and the parameters α and β are unknown and to be estimated. This model is known as the generalized partly linear single-index model. In this paper, w...
Partial linear models, a family of popular semiparametric models, provide us with an interpretable a...
This article is concerned with simple semiparametric alternatives to the fully parametric model (1) ...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
The typical generalized linear model for a regression of a response Y on predictors (X, Z) has condi...
In many situations, data follow a generalized partly linear model in which the mean of the responses...
En esta tesis, introducimos una nueva clase de estimadores robustos para las componentes paramétrica...
Aiming to explore the relation between the response y and the stochastic explanatory vector variable...
We study the non-parametric estimation of partially linear generalized single-index functional model...
In this paper, we study the estimation for a partial-linear single-index model. A two-stage estimati...
Generalized single-index models are natural extensions of linear models and circumvent the so-called...
The partially linear single-index model is a semiparametric model proposed to the case when some pre...
We study partially linear single-index models where both model parts may contain high-dimensional va...
In this paper, we introduce a family of robust statistics which allow to decide between a parametric...
One of the most di±cult problems in applications of semiparametric generalized partially linear sing...
In this paper, we introduce a family of robust statistics which allow to decide between a parametri...
Partial linear models, a family of popular semiparametric models, provide us with an interpretable a...
This article is concerned with simple semiparametric alternatives to the fully parametric model (1) ...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...
The typical generalized linear model for a regression of a response Y on predictors (X, Z) has condi...
In many situations, data follow a generalized partly linear model in which the mean of the responses...
En esta tesis, introducimos una nueva clase de estimadores robustos para las componentes paramétrica...
Aiming to explore the relation between the response y and the stochastic explanatory vector variable...
We study the non-parametric estimation of partially linear generalized single-index functional model...
In this paper, we study the estimation for a partial-linear single-index model. A two-stage estimati...
Generalized single-index models are natural extensions of linear models and circumvent the so-called...
The partially linear single-index model is a semiparametric model proposed to the case when some pre...
We study partially linear single-index models where both model parts may contain high-dimensional va...
In this paper, we introduce a family of robust statistics which allow to decide between a parametric...
One of the most di±cult problems in applications of semiparametric generalized partially linear sing...
In this paper, we introduce a family of robust statistics which allow to decide between a parametri...
Partial linear models, a family of popular semiparametric models, provide us with an interpretable a...
This article is concerned with simple semiparametric alternatives to the fully parametric model (1) ...
AbstractConsider a varying-coefficient single-index model which consists of two parts: the linear pa...