Motivated by the analysis of imaging data, we propose a novel functional
varying-coefficient single index model (FVCSIM) to carry out the regression
analysis of functional response data on a set of covariates of interest. FVCSIM
represents a new extension of varying-coefficient single index models for scalar
responses collected from cross-sectional and longitudinal studies. An efficient
estimation procedure is developed to iteratively estimate varying coefficient
functions, link functions, index parameter vectors, and the covariance function
of individual functions. We systematically examine the asymptotic properties of
all estimators including the weak convergence of the estimated varying
coefficient functions, the asymptotic distribution of the estimated index
parameter vectors, and the uniform convergence rate of the estimated covariance
function and their spectrum. Simulation studies are carried out to assess the
finite-sample performance of the proposed procedure. We apply FVCSIM to
investigating the development of white matter diffusivities along the corpus
callosum skeleton obtained from Alzheimer’s Disease Neuroimaging
Initiative (ADNI) study.
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