49分

1.2 On the regularization of Sliced Inverse Regression (Stéphane Girard‪)‬ StatLearn 2010 - Workshop on "Challenging problems in Statistical Learning"

    • コース

Sliced Inverse Regression (SIR) is an effective method for dimension reduction in highdimensional regression problems. The original method, however, requires the inversion of the predictors covariance matrix. In case of collinearity between these predictors or small sample sizes compared to the dimension, the inversion is not possible and a regularization technique has to be used. Our approach is based on an interpretation of SIR axes as solutions of an inverse regression problem. A prior distribution is then introduced on the unknown parameters of the inverse regression problem in order to regularize their estimation. We show that some existing SIR regularizations can enter our framework, which permits a global understanding of these methods. Three new priors are proposed, leading to new regularizations of the SIR method, and compared on simulated data. An application to the estimation of Mars surface physical properties from hyperspectral images is provided.

Sliced Inverse Regression (SIR) is an effective method for dimension reduction in highdimensional regression problems. The original method, however, requires the inversion of the predictors covariance matrix. In case of collinearity between these predictors or small sample sizes compared to the dimension, the inversion is not possible and a regularization technique has to be used. Our approach is based on an interpretation of SIR axes as solutions of an inverse regression problem. A prior distribution is then introduced on the unknown parameters of the inverse regression problem in order to regularize their estimation. We show that some existing SIR regularizations can enter our framework, which permits a global understanding of these methods. Three new priors are proposed, leading to new regularizations of the SIR method, and compared on simulated data. An application to the estimation of Mars surface physical properties from hyperspectral images is provided.

49分

Université Paris 1 Panthéon-Sorbonneのその他の作品

Témoignages EPI
Université Paris 1 Panthéon-Sorbonne
Découper le temps : les périodes de l'histoire
Université de Paris 1 Panthéon-Sorbonne
Biodiversité
UVED
Présentations des étudiants du Master 2 Recherche Droit Social
Université Paris 1 Panthéon-Sorbonne
Economie circulaire et innovation
UVED
StatLearn 2010 - Workshop on "Challenging problems in Statistical Learning"
Statlearn2010