2021
DOI: 10.48550/arxiv.2106.07479
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An Online Riemannian PCA for Stochastic Canonical Correlation Analysis

Abstract: We present an efficient stochastic algorithm (RSG+) for canonical correlation analysis (CCA) using a reparametrization of the projection matrices. We show how this reparametrization (into structured matrices), simple in hindsight, directly presents an opportunity to repurpose/adjust mature techniques for numerical optimization on Riemannian manifolds. Our developments nicely complement existing methods for this problem which either require O(d 3 ) time complexity per iteration with O( 1 √ t ) convergence rate … Show more

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