Marques, AnabelaFerreira, Ana SousaCardoso, Margarida2015-03-252015-03-252011-06In Book of abstracts of the 14th Applied Stochastic Models and Data Analysis International Conference (ASMDA2011). Rome, 2011http://hdl.handle.net/10400.26/8134Resumo de comunicação em póster apresentada em 14th International Conference on Applied Stochastic Models and Data Analysis (ASMDA2011), Rome, June 7-10 2011In discrete discriminant analysis dimensionality problems occur, particularly when dealing with data from the social sciences, humanities and health. In these domains, one often has to classify entities with a high number of explanatory variables when compared to the number of observations available. In the present work we address the problem of features selection in classification, aiming to identify the variables that most discriminate between the a priori defined classes, reducing the number of parameters to estimate, turning the results easier to interpret and reducing the runtime of the methods used. We specially address classification using a recently methodological approach based on a linear combination of the First-order Independence Model (FOIM) and the Dependence Trees Model (DTM). Data of small and moderate size are considered.engDiscrete Discriminant AnalysisCombining modelsDependence Trees modelFirst Order Independence modelHierarchical Coupling procedureVariable selectionFeatures selection in Discrete Discriminant Analysisconference object