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Sliced inverse regression under linear constraints
Authors:Jerome Saracco
Institution:Laboratoire de Probabilités et Statistique, Departement des sciences mathematiqties , case courrier 051, Université Montpellier II , Place Eugène Bataillon, 34 095, Montpellier Cedex 5 E-mail: saracco@stat.math.univ-montp2.fr
Abstract:We consider the semiparametric regression model introduced by Li (1991) and add to this model some linear constraints on the slope parameters. These constraints can be identifiability conditions or they may carry additional in¬formations on the slope parameters. Using a geometric argument, we develop a method to estimate the slope parameters. This link-free and distribution-free method splits in two steps: the first is a Sliced Inverse Regression (SIR); Canonical Analysis is used at the second step to transform the SIR estimates so that they satisfy the constraints. We establish yn-consistency and obtain the asymptotic distribution of the estimates.

This estimation method is applied to the general sample selection model which is very useful in Econometrics. A simulation study shows that the method performs well in the example considered.
Keywords:Semiparametric Regression Models  General Sample Selection Models  SIR Regression? Canonical Analysis
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