| Literature DB >> 35707609 |
Mengmeng Guo1, Jingyong Su1,2, Li Sun3, Guofeng Cao3.
Abstract
We develop a multivariate regression model when responses or predictors are on nonlinear manifolds, rather than on Euclidean spaces. The nonlinear constraint makes the problem challenging and needs to be studied carefully. By performing principal component analysis (PCA) on tangent space of manifold, we use principal directions instead in the model. Then, the ordinary regression tools can be utilized. We apply the framework to both shape data (ozone hole contours) and functional data (spectrums of absorbance of meat in Tecator dataset). Specifically, we adopt the square-root velocity function representation and parametrization-invariant metric. Experimental results have shown that we can not only perform powerful regression analysis on the non-Euclidean data but also achieve high prediction accuracy by the constructed model.Entities:
Keywords: PCA; Riemannian manifolds; Shape analysis; functional regression; square-root velocity function
Year: 2019 PMID: 35707609 PMCID: PMC9038059 DOI: 10.1080/02664763.2019.1669541
Source DB: PubMed Journal: J Appl Stat ISSN: 0266-4763 Impact factor: 1.416