Transportation-Based Functional ANOVA and PCA for Covariance Operators
Valentina Masarotto, Victor M. Panaretos, Yoav Zemel

TL;DR
This paper introduces a novel transportation-based approach for functional ANOVA and PCA of covariance operators, outperforming existing methods in power and providing geometric insights into the modes of variation.
Contribution
It develops a new optimal multitransport framework for comparing covariance operators and extracting principal modes of variation in functional data analysis.
Findings
Outperforms state-of-the-art tests in power, especially under local alternatives.
Provides a geometric interpretation of transport maps for functional data.
Demonstrates effectiveness on simulated and real datasets.
Abstract
We consider the problem of comparing several samples of stochastic processes with respect to their second-order structure, and describing the main modes of variation in this second order structure, if present. These tasks can be seen as an Analysis of Variance (ANOVA) and a Principal Component Analysis (PCA) of covariance operators, respectively. They arise naturally in functional data analysis, where several populations are to be contrasted relative to the nature of their dispersion around their means, rather than relative to their means themselves. We contribute a novel approach based on optimal (multi)transport, where each covariance can be identified with a a centred Gaussian process of corresponding covariance. By means of constructing the optimal simultaneous coupling of these Gaussian processes, we contrast the (linear) maps that achieve it with the identity with respect to a…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Advanced Statistical Methods and Models · Bayesian Methods and Mixture Models
