International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction in high-dimensional 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 a Fisher Lecture given by R.D. Cook where it is shown that SIR axes can be interpreted as solutions of an inverse regression problem. We propose to introduce a Gaussian prior distribution on the unknown parameters of the inverse regression problem in order to regularize their estimation. We show that some existing SI...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...
We provide here a framework to analyze the phase transition phenomenon of slice inverse regression (...
We present two different algorithms for sufficient dimension reduction based on the difference betwe...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
International audienceSliced Inverse Regression (SIR) has been extensively used to reduce the dimens...
Sliced Inverse Regression (SIR) is a promising technique for the purpose of dimension reduction. Sev...
International audienceSince its introduction in the early 90's, the Sliced Inverse Regression (SIR) ...
International audienceSliced Inverse Regression (SIR) is an effective method for dimensionality redu...
DoctoralIn this tutorial, we focus on data arriving sequentially by block in a stream. A semiparamet...
Cette thèse propose trois extensions de la Régression linéaire par tranches (Sliced Inverse Regressi...
International audienceAmong methods to analyze high-dimensional data, the sliced inverse regression ...
This thesis proposes three extensions of Sliced Inverse Regression namely: Collaborative SIR, Stude...
Sliced inverse regression (SIR) is a clever technique for reducing the dimension of the predictor i...
In this article, we focus on data arriving sequentially by blocks in a stream. A semiparametric regr...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...
We provide here a framework to analyze the phase transition phenomenon of slice inverse regression (...
We present two different algorithms for sufficient dimension reduction based on the difference betwe...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
International audienceSliced Inverse Regression (SIR) is an effective method for dimension reduction...
International audienceSliced Inverse Regression (SIR) has been extensively used to reduce the dimens...
Sliced Inverse Regression (SIR) is a promising technique for the purpose of dimension reduction. Sev...
International audienceSince its introduction in the early 90's, the Sliced Inverse Regression (SIR) ...
International audienceSliced Inverse Regression (SIR) is an effective method for dimensionality redu...
DoctoralIn this tutorial, we focus on data arriving sequentially by block in a stream. A semiparamet...
Cette thèse propose trois extensions de la Régression linéaire par tranches (Sliced Inverse Regressi...
International audienceAmong methods to analyze high-dimensional data, the sliced inverse regression ...
This thesis proposes three extensions of Sliced Inverse Regression namely: Collaborative SIR, Stude...
Sliced inverse regression (SIR) is a clever technique for reducing the dimension of the predictor i...
In this article, we focus on data arriving sequentially by blocks in a stream. A semiparametric regr...
International audienceA semiparametric regression model of a q-dimensional multivariate response y o...
We provide here a framework to analyze the phase transition phenomenon of slice inverse regression (...
We present two different algorithms for sufficient dimension reduction based on the difference betwe...