| Literature DB >> 25787146 |
Mark J Meyer1, Brent A Coull2, Francesco Versace3, Paul Cinciripini3, Jeffrey S Morris3.
Abstract
Medical and public health research increasingly involves the collection of complex and high dimensional data. In particular, functional data-where the unit of observation is a curve or set of curves that are finely sampled over a grid-is frequently obtained. Moreover, researchers often sample multiple curves per person resulting in repeated functional measures. A common question is how to analyze the relationship between two functional variables. We propose a general function-on-function regression model for repeatedly sampled functional data on a fine grid, presenting a simple model as well as a more extensive mixed model framework, and introducing various functional Bayesian inferential procedures that account for multiple testing. We examine these models via simulation and a data analysis with data from a study that used event-related potentials to examine how the brain processes various types of images.Entities:
Keywords: Basis functions; Bayesian inference; Function-on-function regression; Functional data analysis; Functional mixed models; Functional testing; Principal components; Wavelet regression
Mesh:
Year: 2015 PMID: 25787146 PMCID: PMC4575250 DOI: 10.1111/biom.12299
Source DB: PubMed Journal: Biometrics ISSN: 0006-341X Impact factor: 2.571