Title
Kernel Generalized Canonical Correlation Analysis
Abstract
There is a growing need to analyze datasets characterized by several sets of variables observed on a single set of observations. Such complex but structured dataset are known as multiblock dataset, and their analysis requires the development of new and flexible tools. For this purpose, Kernel Generalized Canonical Correlation Analysis (KGCCA) is proposed and offers a general framework for multiblock data analysis taking into account an a priori graph of connections between blocks. It appears that KGCCA subsumes, with a single monotonically convergent algorithm, a remarkably large number of well-known and new methods as particular cases. KGCCA is applied to a simulated 3 -block dataset and a real molecular biology dataset that combines Gene Expression data, Comparative Genomic Hybridization data and a qualitative phenotype measured for a set of 53 children with glioma.KGCCA is available on CRAN as part of the RGCCA package.
Year
DOI
Venue
2015
10.1016/j.csda.2015.04.004
Computational Statistics & Data Analysis
Keywords
Field
DocType
Regularized Generalized Canonical Correlation analysis,Reproducing Kernel Hilbert Space,Data integration
Data integration,Kernel (linear algebra),Econometrics,Monotonic function,Graph,A priori and a posteriori,Statistics,Generalized canonical correlation,Reproducing kernel Hilbert space,Mathematics
Journal
Volume
Issue
ISSN
90
C
0167-9473
Citations 
PageRank 
References 
5
0.42
18
Authors
3
Name
Order
Citations
PageRank
Arthur Tenenhaus1648.61
Cathy Philippe250.42
V Frouin354879.73