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Multivariate functional response low‐rank regression with an application to brain imaging data
Authors:Xiucai Ding  Dengdeng Yu  Zhengwu Zhang  Dehan Kong
Abstract:We propose a multivariate functional response low‐rank regression model with possible high‐dimensional functional responses and scalar covariates. By expanding the slope functions on a set of sieve bases, we reconstruct the basis coefficients as a matrix. To estimate these coefficients, we propose an efficient procedure using nuclear norm regularization. We also derive error bounds for our estimates and evaluate our method using simulations. We further apply our method to the Human Connectome Project neuroimaging data to predict cortical surface motor task‐evoked functional magnetic resonance imaging signals using various clinical covariates to illustrate the usefulness of our results.
Keywords:functional data  functional magnetic resonance imaging  low rank  sieve regression
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