We introduce the functional generalized additive model (FGAM), a novel regression model for association studies between a scalar response and a functional predictor. We model the link-transformed mean response as the integral with respect to t of F{X(t), t} where F (·, ·) is an unknown regression function and X(t) is a functional covariate. Rather than having an additive model in a finite number of principal components as in Müller and Yao (2008), our model incorporates the functional predictor directly and thus our model can be viewed as the natural functional extension of generalized additive models. We estimate F (·, ·) using tensor-product B-splines with roughness penalties. A pointwise quantile transformation of the functional predicto...
A generalized functional linear regression model is proposed by considering a functional covariate a...
Functional data analysis (FDA) plays an important role in analyzing function-valued data such as gro...
We propose a class of estimation techniques for scalar-on-function regres-sion in longitudinal studi...
<div><p>We introduce the functional generalized additive model (FGAM), a novel regression model for ...
We introduce the functional generalized additive model (FGAM), a novel regression model for associat...
We introduce continuously additive models, which can be motivated as extensions of ad-ditive regress...
Researchers are increasingly interested in regression models for functional data. This article discu...
We propose a new, more flexible model to tackle the issue of lack of t for conventional functional l...
Summary: Functional principal component regression (FPCR) is a promising new method for regressing s...
<div><p>We propose an extensive framework for additive regression models for correlated functional r...
We propose an extensive framework for additive regression models for correlated functional responses...
Recent years have seen an explosion of activity in the field of functional data analysis (FDA), in w...
We develop fast fitting methods for generalized functional linear models. An undersmooth of the func...
The functional generalized additive model (FGAM) was recently proposed in McLean et al. (2012) as a ...
Motivated by recent work on studying massive imaging data in various neuroimaging studies,our group ...
A generalized functional linear regression model is proposed by considering a functional covariate a...
Functional data analysis (FDA) plays an important role in analyzing function-valued data such as gro...
We propose a class of estimation techniques for scalar-on-function regres-sion in longitudinal studi...
<div><p>We introduce the functional generalized additive model (FGAM), a novel regression model for ...
We introduce the functional generalized additive model (FGAM), a novel regression model for associat...
We introduce continuously additive models, which can be motivated as extensions of ad-ditive regress...
Researchers are increasingly interested in regression models for functional data. This article discu...
We propose a new, more flexible model to tackle the issue of lack of t for conventional functional l...
Summary: Functional principal component regression (FPCR) is a promising new method for regressing s...
<div><p>We propose an extensive framework for additive regression models for correlated functional r...
We propose an extensive framework for additive regression models for correlated functional responses...
Recent years have seen an explosion of activity in the field of functional data analysis (FDA), in w...
We develop fast fitting methods for generalized functional linear models. An undersmooth of the func...
The functional generalized additive model (FGAM) was recently proposed in McLean et al. (2012) as a ...
Motivated by recent work on studying massive imaging data in various neuroimaging studies,our group ...
A generalized functional linear regression model is proposed by considering a functional covariate a...
Functional data analysis (FDA) plays an important role in analyzing function-valued data such as gro...
We propose a class of estimation techniques for scalar-on-function regres-sion in longitudinal studi...