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Single-index modelling of conditional probabilities in two-way contingency tables
Authors:Gery Geenens  Léopold Simar
Affiliation:1. Department of Mathematics and Statistics , The University of Melbourne , Australia gery.geenens@unsw.edu.au;3. Institut de Statistique , Université Catholique de Louvain , Belgium
Abstract:
When analysing a contingency table, it is often worth relating the probabilities that a given individual falls into different cells from a set of predictors. These conditional probabilities are usually estimated using appropriate regression techniques. In particular, in this paper, a semiparametric model is developed. Essentially, it is only assumed that the effect of the vector of covariates on the probabilities can entirely be captured by a single index, which is a linear combination of the initial covariates. The estimation is then twofold: the coefficients of the linear combination and the functions linking this index to the related conditional probabilities have to be estimated. Inspired by the estimation procedures already proposed in the literature for single-index regression models, four estimators of the index coefficients are proposed and compared, from a theoretical point-of-view, but also practically, with the aid of simulations. Estimation of the link functions is also addressed.
Keywords:contingency table  single-index model  semiparametric maximum likelihood  semiparametric least squares  average derivatives  sliced inverse regression
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