| Literature DB >> 34354773 |
Xiaoshan Li1, Da Xu2, Hua Zhou3, Lexin Li2.
Abstract
Neuroimaging data often take the form of high dimensional arrays, also known as tensors. Addressing scientific questions arising from such data demands new regression models that take multidimensional arrays as covariates. Simply turning an image array into a vector would both cause extremely high dimensionality and destroy the inherent spatial structure of the array. In a recent work, Zhou et al. (2013) proposed a family of generalized linear tensor regression models based upon the CP (CANDECOMP/PARAFAC) decomposition of regression coefficient array. Low rank approximation brings the ultrahigh dimensionality to a manageable level and leads to efficient estimation. In this article, we propose a tensor regression model based on the more flexible Tucker decomposition. Compared to the CP model, Tucker regression model allows different number of factors along each mode. Such flexibility leads to several advantages that are particularly suited to neuroimaging analysis, including further reduction of the number of free parameters, accommodation of images with skewed dimensions, explicit modeling of interactions, and a principled way of image downsizing. We also compare the Tucker model with CP numerically on both simulated data and a real magnetic resonance imaging data, and demonstrate its effectiveness in finite sample performance.Keywords: CP decomposition; Tucker decomposition; magnetic resonance image; multidimensional array; tensor regression
Year: 2018 PMID: 34354773 PMCID: PMC8336908 DOI: 10.1007/s12561-018-9215-6
Source DB: PubMed Journal: Stat Biosci ISSN: 1867-1764