Functional Data Analysis by Matrix Completion
Marie-H\'el\`ene Descary, Victor M. Panaretos

TL;DR
This paper introduces a novel matrix completion approach to separately recover smooth and rough components of functional data, improving interpretability over traditional smoothing and PCA methods.
Contribution
It develops identifiability conditions and estimators for decomposing functional data into smooth and rough parts using matrix completion techniques.
Findings
Successful separation of smooth and rough variations in functional data.
Estimation procedures with proven asymptotic properties.
Enhanced functional PCA for distinct components.
Abstract
Functional data analyses typically proceed by smoothing, followed by functional PCA. This paradigm implicitly assumes that rough variation is due to nuisance noise. Nevertheless, relevant functional features such as time-localised or short scale fluctuations may indeed be rough relative to the global scale, but still smooth at shorter scales. These may be confounded with the global smooth components of variation by the smoothing and PCA, potentially distorting the parsimony and interpretability of the analysis. The goal of this paper is to investigate how both smooth and rough variations can be recovered on the basis of discretely observed functional data. Assuming that a functional datum arises as the sum of two uncorrelated components, one smooth and one rough, we develop identifiability conditions for the recovery of the two corresponding covariance operators. The key insight is that…
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