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CQFD - 2011


Project Team Cqfd


Overall Objectives
Scientific Foundations
Application Domains
Bibliography


Project Team Cqfd


Overall Objectives
Scientific Foundations
Application Domains
Bibliography


Section: New Results

Optimal quantization applied to Sliced Inverse Regression

Participants : Romain Azaïs, François Dufour, Anne Gégout-Petit, Jérôme Saracco.

We tackle the well known Slice Inverse Regression (SIR) method for a semiparametric regression model involving a quantitative variable X and including a dimension reduction of X via a parameter β. The response variable Y is real. Our goal is to estimate β and to predict the response variable conditionally to X. We adapt SIR method using optimal quantization [57] in the first time only for the independent variable X for the estimation of β. In a second time, we quantize the variable (β ^ n ,Y) in order to propose a discrete conditional law of Y given X=x. We show the convergence of the estimator of β and of the conditional law. Simulation studies show the numerical qualities of our estimates. This work is the object of a publication in Journal of Statistical Planning and Inference [15] and was presented in a national conference [23]