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Statistica Sinica 32 (2022), 1269-1293

ROBUST SMOOTHED CANONICAL CORRELATION
ANALYSIS FOR FUNCTIONAL DATA

Graciela Boente1,3 and Nadia L. Kudraszow2,3

1Universidad de Buenos Aires, 2Universidad Nacional de La Plata
and 3CONICET, Argentina

Abstract: We provide robust estimators for the first canonical correlation and directions of random elements on Hilbert separable spaces by using robust association and scale measures, combined with basis expansions and/or penalizations as a regularization tool. Under regularity conditions, the resulting estimators are consistent. The finite-sample performance of our proposal is illustrated by means of a simulation study that shows that, as expected, the robust method outperforms the existing classical procedure when the data are contaminated. A real data example is also presented.

Keywords words and phrases: Canonical correlation analysis, functional data, robust estimation, smoothing techniques.

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