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Interpretable sparse sliced inverse regression for functional data

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HAL Id: hal-02799481

https://hal.inrae.fr/hal-02799481

Submitted on 5 Jun 2020

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Interpretable sparse sliced inverse regression for

functional data

Victor Picheny, Rémi Servien, Nathalie Villa-Vialaneix

To cite this version:

Victor Picheny, Rémi Servien, Nathalie Villa-Vialaneix. Interpretable sparse sliced inverse regression for functional data. Workshop Learning with Functional Data, Oct 2016, Lille, France. �hal-02799481�

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Interpretable space sliced inverse regression for functional data

V. Picheny, R. Servien (speaker), N. Villa-Vialaneix

The focus is on the functional regression model in which a real random variable has to be predicted from functional predictors. We use the semiparametric framework of Sliced Inverse Regression (SIR). SIR is an effective method for dimension reduction of high-dimensional data which computes a linear projection of thepredictors in a low-dimensional space, without loss on regression information. We address the issue of variable selection in functional SIR in order to improve the interpretability of the components. We extend the approaches of variable selection developped for multidimensional SIR to select intervals rather than separated evaluation points in the definition domain of functional

predictors. SIR is formulated in different and equivalent ways which are alternatively used to produce ridge estimates of the components which are shrinked afterwards with a group-LASSO like penalty. An iterative procedure which automatically defines the relevant intervals is also introduced to provide a priori information to the sparse model. The approach is proved efficient on simulated data.

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