A Tutorial on Canonical Correlation Methods
November 07, 2017 Β· The Cartographer Β· π ACM Computing Surveys
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"Title-pattern auto-detect: A Tutorial on Canonical Correlation Methods"
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Authors
Viivi Uurtio, JoΓ£o M. Monteiro, Jaz Kandola, John Shawe-Taylor, Delmiro Fernandez-Reyes, Juho Rousu
arXiv ID
1711.02391
Category
cs.LG: Machine Learning
Cross-listed
stat.ML
Citations
119
Venue
ACM Computing Surveys
Last Checked
1 day ago
Abstract
Canonical correlation analysis is a family of multivariate statistical methods for the analysis of paired sets of variables. Since its proposition, canonical correlation analysis has for instance been extended to extract relations between two sets of variables when the sample size is insufficient in relation to the data dimensionality, when the relations have been considered to be non-linear, and when the dimensionality is too large for human interpretation. This tutorial explains the theory of canonical correlation analysis including its regularised, kernel, and sparse variants. Additionally, the deep and Bayesian CCA extensions are briefly reviewed. Together with the numerical examples, this overview provides a coherent compendium on the applicability of the variants of canonical correlation analysis. By bringing together techniques for solving the optimisation problems, evaluating the statistical significance and generalisability of the canonical correlation model, and interpreting the relations, we hope that this article can serve as a hands-on tool for applying canonical correlation methods in data analysis.
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