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A flexible Tool for Model Building: the Relevant Transformation of the Inputs Network Approach

dc.contributor.authorPérez Amaral, Teodosio
dc.contributor.authorGallo, Giampiero
dc.contributor.authorWhite, Halbert
dc.date.accessioned2023-06-21T01:45:26Z
dc.date.available2023-06-21T01:45:26Z
dc.date.issued2002
dc.description.abstractA new method, called relevant transformation of the inputs network approach (RETINA) is proposed as a tool for model building and selection. It is designed to improve some of the shortcomings of neural networks. It has the flexibility of neural network models, the concavity of the likelihood in the weights of the usual likelihood models, and the ability to identify a parsimonious set of attributes that are likely to be relevant for predicting out of sample outcomes. RETINA expands the range of models by considering transformations of the original inputs; splits the sample in three disjoint subsamples, sorts the candidate regressors by a saliency feature, chooses the models in subsample 1, uses subsample 2 for parameter estimation and subsample 3 for cross-validation. It is modular, can be used as a data exploratory tool and is computationally feasible in personal computers. In tests on simulated data, it achieves high rates of successes when the sample size or the R2 are large enough. As our experiments show, it is superior to alternative procedures such as the non negative garrote and forward and backward stepwise regression.
dc.description.facultyFac. de Ciencias Económicas y Empresariales
dc.description.facultyInstituto Complutense de Análisis Económico (ICAE)
dc.description.refereedTRUE
dc.description.statuspub
dc.eprint.idhttps://eprints.ucm.es/id/eprint/7650
dc.identifier.relatedurlhttps://www.ucm.es/icae
dc.identifier.urihttps://hdl.handle.net/20.500.14352/64491
dc.issue.number01
dc.language.isoeng
dc.publication.placeMadrid
dc.publisherInstituto Complutense de Análisis Económico. Universidad Complutense de Madrid
dc.relation.ispartofseriesDocumentos de trabajo del Instituto Complutense de Análisis Económico (ICAE)
dc.rights.accessRightsopen access
dc.subject.keywordRETINA
dc.subject.ucmComercio
dc.subject.unesco5304.03 Comercio exterior
dc.titleA flexible Tool for Model Building: the Relevant Transformation of the Inputs Network Approach
dc.typetechnical report
dc.volume.number2002
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dspace.entity.typePublication
relation.isAuthorOfPublication14ac85fa-418f-40ee-b712-4075cd494574
relation.isAuthorOfPublication.latestForDiscovery14ac85fa-418f-40ee-b712-4075cd494574

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