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Generalized Canonical Correlation Analysis for Classification

Cencheng Shen
Ming Sun
M. Tang
Carey E. Priebe
Abstract

For multiple multivariate data sets, we derive conditions under which Generalized Canonical Correlation Analysis (GCCA) improves classification performance of the projected datasets, compared to standard Canonical Correlation Analysis (CCA) using only two data sets. We illustrate our theoretical results with simulations and a real data experiment.

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