Functional independent component analysis by choice of norm: a framework for near-perfect classification
Metadatos
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Springer Nature
Materia
Depressive disorder EEG Functional classification Feldman-Hajek dichotomy Kurtosis
Fecha
2024-12-23Referencia bibliográfica
Published version: Vidal, M., Leman, M. & Aguilera, A.M. Functional independent component analysis by choice of norm: a framework for near-perfect classification. Adv Data Anal Classif (2025). https://doi.org/10.1007/s11634-024-00622-5
Patrocinador
Flemish Government, Methusalem; Government of Andalusia (Spain) FQM-307; Agencia Estatal de Investigación, Ministerio de Ciencia e Innovación (PID2020-113961GB-I00); IMAG María de Maeztu CEX2020-001105-M/AEI/10.13039/501100011033Resumen
We develop a theory for functional independent component analysis in an infinite dimensional framework using Sobolev spaces that accommodate smoother functions.
The notion of penalized kurtosis is introduced motivated by Silverman’s method for
smoothing principal components. This approach allows for a classical definition of in dependent components obtained via projection onto the eigenfunctions of a smoothed
kurtosis operator mapping a whitened functional random variable. We discuss the
theoretical properties of this operator in relation to a generalized Fisher discriminant function and the relationship it entails with the Feldman-Hajek dichotomy for ´
Gaussian measures, both of which are critical to the principles of functional classification. The proposed estimators are a particularly competitive alternative in binary
classification of functional data and can eventually achieve the so-called near-perfect
classification, which is a genuine phenomenon of high-dimensional data. Our methods are illustrated through simulations, various real datasets, and used to model
electroencephalographic biomarkers for the diagnosis of depressive disorder.