2024
DOI: 10.1111/sjos.12719
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Minimax estimation of functional principal components from noisy discretized functional data

Ryad Belhakem,
Franck Picard,
Vincent Rivoirard
et al.

Abstract: Functional Principal Component Analysis is a reference method for dimension reduction of curve data. Its theoretical properties are now well understood in the simplified case where the sample curves are fully observed without noise. However, functional data are noisy and necessarily observed on a finite discretization grid. Common practice consists in smoothing the data and then to compute the functional estimates, but the impact of this denoising step on the procedure's statistical performance are rarely cons… Show more

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