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Information-based Parameterization of the Log-linear Model for Categorical Data Analysis
Authors:Valérie Girardin  Justine Lequesne  Anne Ricordeau
Institution:1.Laboratoire de Mathématiques N. Oresme,Université de Caen Normandie,Caen,France;2.Laboratoire MAP5, UMR 8145, UFR de Mathématiques et Informatique,Université Paris Descartes,Paris Cedex 06,France
Abstract:Zighera (App Stoch Mod Data Anal 1:93–108 1985) introduced a new parameterization of log-linear models for analyzing categorical data, directly linked to a thorough analysis of discrimination information through Kullback-Leibler divergence. The method mainly aims at quantifying in terms of information the variations of a binary variable of interest, by comparing two contingency tables – or sub-tables – through effects of explanatory categorical variables. The present paper settles the mathematical background necessary to rigorously apply Zighera’s parameterization to any categorical data. In particular, identifiability and good properties of asymptotically χ 2-distributed test statistics are proven to hold. Determination of parameters and all tests of effects due to explanatory variables are simultaneous. Application to classical data sets illustrates contribution with respect to existing methods.
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