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Estimating Common Principal Components in High...
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Estimating Common Principal Components in High Dimensions

Abstract

We consider the problem of minimizing an objective function that depends on an orthonormal matrix. This situation is encountered when looking for common principal components, for example, and the Flury method is a popular approach. However, the Flury method is not effective for higher dimensional problems. We obtain several simple majorization-minizmation (MM) algorithms that provide solutions to this problem and are effective in higher dimensions. We then use simulated data to compare them with other approaches in terms of convergence and computational time.

Authors

Browne RP; McNicholas PD

Publication date

February 8, 2013

DOI

10.48550/arxiv.1302.2102

Preprint server

arXiv
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