Penalised functional partial least squares regression with multiple covariates
C. Díaz-Louzao, M. C. Aguilera-Morillo, A. J. Ferrer-Riquelme
The direct estimation of a function-on-function regression model is usually an ill-posed problem because both the functional variables and the coefficients have infinite dimension. In practice, the first step is to obtain the functional data by assuming an expansion of each sample curve in terms of basis functions and then to estimate the basis coefficients by smoothing techniques. In this context, we extend the penalised version of the function-on-function partial least squares approach to the multivariate case. This approach imposes smoothness on the PLS weights by introducing an appropriate finite-dimensional functional space with an associated set of bases on which to represent the data and controls smoothness with a roughness penalty operator. Penalising the PLS weights imposes smoothness on the resulting coefficient function, improving its interpretability. To illustrate the benefits of our model, we applied it synthetic and real data sets.
Palabras clave: multivariate functional data, functional PLS, P-spline penalty
Programado
GT Análisis de Datos Funcionales I
4 de septiembre de 2026 09:00
Aula 30
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