Generalized additive models are a popular class of multivariate non-parametric regression models, due in large part to the ease of use of the local scoring estimation algorithm. However, the theoretical properties of the local scoring estimator are poorly understood. In this article, we propose a local likelihood estimator for generalized additive models that is closely related to the local scoring estimator fitted by local polynomial regression. We derive the statistical properties of the estimator and show that it achieves the same asymptotic convergence rate as a one-dimensional local polynomial regression estimator. We also propose a wild bootstrap estimator for calculating point-wise confidence intervals for the additive component func...
We propose generalized additive partial linear models for complex data which allow one to capture no...
This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathemat...
Additive models with backfitting algorithms are popular multivariate nonparametric fitting technique...
Generalized additive models are a popular class of multivariate non-parametric regression models, du...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
While the additive model is a popular nonparametric regression method, many of its theoretical prope...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
We study generalized additive partial linear models, proposing the use of polynomial spline smoothin...
Additive models with back tting algorithms are popular multivariate nonparametric tting technique...
<div><p>This article studies <i>M</i>-type estimators for fitting robust generalized additive models...
The local likelihood estimator and a semiparametric bootstrap method are studied under weaker condit...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
This paper studies generalized additive partial linear models with high-dimensional covariates. We a...
The authors propose the local likelihood method for the time-varying coefficient additive hazards mo...
We propose generalized additive partial linear models for complex data which allow one to capture no...
This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathemat...
Additive models with backfitting algorithms are popular multivariate nonparametric fitting technique...
Generalized additive models are a popular class of multivariate non-parametric regression models, du...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
AbstractThe parametric generalized linear model assumes that the conditional distribution of a respo...
While the additive model is a popular nonparametric regression method, many of its theoretical prope...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
We study generalized additive partial linear models, proposing the use of polynomial spline smoothin...
Additive models with back tting algorithms are popular multivariate nonparametric tting technique...
<div><p>This article studies <i>M</i>-type estimators for fitting robust generalized additive models...
The local likelihood estimator and a semiparametric bootstrap method are studied under weaker condit...
The use of generalized additive models in statistical data analysis suffers from the restriction to ...
This paper studies generalized additive partial linear models with high-dimensional covariates. We a...
The authors propose the local likelihood method for the time-varying coefficient additive hazards mo...
We propose generalized additive partial linear models for complex data which allow one to capture no...
This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathemat...
Additive models with backfitting algorithms are popular multivariate nonparametric fitting technique...