Additive Function-on-Function Regression
Abstract
We study additive function-on-function regression where the mean response at a particular time point depends on the time point itself as well as the entire covariate trajectory. We develop a computationally efficient estimation methodology based on a novel combination of spline bases with an eigenbasis to represent the trivariate kernel function. We discuss prediction of a new response trajectory, propose an inference procedure that accounts for total variability in the predicted response curves, and construct pointwise prediction intervals. The estimation/inferential procedure accommodates realistic scenarios such as correlated error structure as well as sparse and/or irregular designs. We investigate our methodology in finite sample size through simulations and two real data applications.
Cite
@article{arxiv.1606.03775,
title = {Additive Function-on-Function Regression},
author = {Janet S. Kim and Ana-Maria Staicu and Arnab Maity and Raymond J. Carroll and David Ruppert},
journal= {arXiv preprint arXiv:1606.03775},
year = {2016}
}
Comments
26 pages, 4 figures