Literature DB >> 35983506

D-GCCA: Decomposition-based Generalized Canonical Correlation Analysis for Multi-view High-dimensional Data.

Hai Shu1, Zhe Qu2, Hongtu Zhu3.   

Abstract

Modern biomedical studies often collect multi-view data, that is, multiple types of data measured on the same set of objects. A popular model in high-dimensional multi-view data analysis is to decompose each view's data matrix into a low-rank common-source matrix generated by latent factors common across all data views, a low-rank distinctive-source matrix corresponding to each view, and an additive noise matrix. We propose a novel decomposition method for this model, called decomposition-based generalized canonical correlation analysis (D-GCCA). The D-GCCA rigorously defines the decomposition on the L 2 space of random variables in contrast to the Euclidean dot product space used by most existing methods, thereby being able to provide the estimation consistency for the low-rank matrix recovery. Moreover, to well calibrate common latent factors, we impose a desirable orthogonality constraint on distinctive latent factors. Existing methods, however, inadequately consider such orthogonality and may thus suffer from substantial loss of undetected common-source variation. Our D-GCCA takes one step further than generalized canonical correlation analysis by separating common and distinctive components among canonical variables, while enjoying an appealing interpretation from the perspective of principal component analysis. Furthermore, we propose to use the variable-level proportion of signal variance explained by common or distinctive latent factors for selecting the variables most influenced. Consistent estimators of our D-GCCA method are established with good finite-sample numerical performance, and have closed-form expressions leading to efficient computation especially for large-scale data. The superiority of D-GCCA over state-of-the-art methods is also corroborated in simulations and real-world data examples.

Entities:  

Keywords:  Canonical variable; common and distinctive variation structures; data integration; high-dimensional data; multi-view data

Year:  2022        PMID: 35983506      PMCID: PMC9380864     

Source DB:  PubMed          Journal:  J Mach Learn Res        ISSN: 1532-4435            Impact factor:   5.177


  27 in total

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3.  D-CCA: A Decomposition-based Canonical Correlation Analysis for High-Dimensional Datasets.

Authors:  Hai Shu; Xiao Wang; Hongtu Zhu
Journal:  J Am Stat Assoc       Date:  2019-04-11       Impact factor: 5.033

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5.  The Image and Data Archive at the Laboratory of Neuro Imaging.

Authors:  Karen L Crawford; Scott C Neu; Arthur W Toga
Journal:  Neuroimage       Date:  2015-05-14       Impact factor: 6.556

6.  Function in the human connectome: task-fMRI and individual differences in behavior.

Authors:  Deanna M Barch; Gregory C Burgess; Michael P Harms; Steven E Petersen; Bradley L Schlaggar; Maurizio Corbetta; Matthew F Glasser; Sandra Curtiss; Sachin Dixit; Cindy Feldt; Dan Nolan; Edward Bryant; Tucker Hartley; Owen Footer; James M Bjork; Russ Poldrack; Steve Smith; Heidi Johansen-Berg; Abraham Z Snyder; David C Van Essen
Journal:  Neuroimage       Date:  2013-05-16       Impact factor: 6.556

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Authors:  David C Van Essen; Stephen M Smith; Deanna M Barch; Timothy E J Behrens; Essa Yacoub; Kamil Ugurbil
Journal:  Neuroimage       Date:  2013-05-16       Impact factor: 6.556

8.  Comprehensive Molecular Portraits of Invasive Lobular Breast Cancer.

Authors:  Giovanni Ciriello; Michael L Gatza; Andrew H Beck; Matthew D Wilkerson; Suhn K Rhie; Alessandro Pastore; Hailei Zhang; Michael McLellan; Christina Yau; Cyriac Kandoth; Reanne Bowlby; Hui Shen; Sikander Hayat; Robert Fieldhouse; Susan C Lester; Gary M K Tse; Rachel E Factor; Laura C Collins; Kimberly H Allison; Yunn-Yi Chen; Kristin Jensen; Nicole B Johnson; Steffi Oesterreich; Gordon B Mills; Andrew D Cherniack; Gordon Robertson; Christopher Benz; Chris Sander; Peter W Laird; Katherine A Hoadley; Tari A King; Charles M Perou
Journal:  Cell       Date:  2015-10-08       Impact factor: 41.582

9.  Cell-of-Origin Patterns Dominate the Molecular Classification of 10,000 Tumors from 33 Types of Cancer.

Authors:  Katherine A Hoadley; Christina Yau; Toshinori Hinoue; Denise M Wolf; Alexander J Lazar; Esther Drill; Ronglai Shen; Alison M Taylor; Andrew D Cherniack; Vésteinn Thorsson; Rehan Akbani; Reanne Bowlby; Christopher K Wong; Maciej Wiznerowicz; Francisco Sanchez-Vega; A Gordon Robertson; Barbara G Schneider; Michael S Lawrence; Houtan Noushmehr; Tathiane M Malta; Joshua M Stuart; Christopher C Benz; Peter W Laird
Journal:  Cell       Date:  2018-04-05       Impact factor: 41.582

10.  Comprehensive molecular portraits of human breast tumours.

Authors: 
Journal:  Nature       Date:  2012-09-23       Impact factor: 49.962

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