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Parameterizations and Fitting of Bi-directed Graph Models to Categorical Data
Authors:MONIA LUPPARELLI  GIOVANNI M MARCHETTI  WICHER P BERGSMA
Institution:Dipartimento di Scienze Statistiche 'P. Fortunati', University of Bologna;
Dipartimento di Statistica 'G. Parenti', University of Florence;
London School of Economics and Political Science
Abstract:Abstract.  We discuss two parameterizations of models for marginal independencies for discrete distributions which are representable by bi-directed graph models, under the global Markov property. Such models are useful data analytic tools especially if used in combination with other graphical models. The first parameterization, in the saturated case, is also known as thenation multivariate logistic transformation, the second is a variant that allows, in some (but not all) cases, variation-independent parameters. An algorithm for maximum likelihood fitting is proposed, based on an extension of the Aitchison and Silvey method.
Keywords:complete hierarchical parameterizations  connected set Markov property  constrained maximum likelihood  covariance graphs  marginal independence  marginal log-linear models  multivariate logistic transformation  variation independence
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