Linear Dimensionality Reduction: Survey, Insights, and Generalizations
John P. Cunningham, Zoubin Ghahramani

TL;DR
This paper surveys linear dimensionality reduction methods, framing them as matrix manifold optimization problems, and introduces a flexible solver that can generalize and innovate classical techniques.
Contribution
It unifies various linear reduction methods under a matrix manifold optimization framework and presents a generic solver capable of creating new variants.
Findings
Provides insight into shortcomings of classical methods
Introduces a flexible, objective-agnostic solver
Demonstrates creation of a new orthogonal-projection CCA
Abstract
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to their simple geometric interpretations and typically attractive computational properties. These methods capture many data features of interest, such as covariance, dynamical structure, correlation between data sets, input-output relationships, and margin between data classes. Methods have been developed with a variety of names and motivations in many fields, and perhaps as a result the connections between all these methods have not been highlighted. Here we survey methods from this disparate literature as optimization programs over matrix manifolds. We discuss principal component analysis, factor analysis, linear multidimensional scaling, Fisher's linear discriminant analysis, canonical correlations analysis, maximum autocorrelation factors, slow feature analysis, sufficient…
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Taxonomy
TopicsFace and Expression Recognition · Blind Source Separation Techniques · Spectroscopy and Chemometric Analyses
