| Literature DB >> 28919663 |
Philip T Reiss1,2, Jeff Goldsmith3, Han Lin Shang4, R Todd Ogden3,5.
Abstract
Recent years have seen an explosion of activity in the field of functional data analysis (FDA), in which curves, spectra, images, etc. are considered as basic functional data units. A central problem in FDA is how to fit regression models with scalar responses and functional data points as predictors. We review some of the main approaches to this problem, categorizing the basic model types as linear, nonlinear and nonparametric. We discuss publicly available software packages, and illustrate some of the procedures by application to a functional magnetic resonance imaging dataset.Entities:
Keywords: functional additive model; functional generalized linear model; functional linear model; functional polynomial regression; functional single-index model; nonparametric functional regression
Year: 2016 PMID: 28919663 PMCID: PMC5598560 DOI: 10.1111/insr.12163
Source DB: PubMed Journal: Int Stat Rev ISSN: 0306-7734 Impact factor: 2.217