Decision analysis networks

Díez, Francisco Javier, Luque, Manuel y Bermejo, Iñigo . (2018) Decision analysis networks. International Journal of Approximate Reasoning

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Título Decision analysis networks
Autor(es) Díez, Francisco Javier
Luque, Manuel
Bermejo, Iñigo
Materia(s) Ingeniería Informática
Abstract This paper presents decision analysis networks (DANs) as a new type of probabilistic graphical model. Like influence diagrams (IDs), DANs are much more compact and easier to build than decision trees and can represent conditional independencies. In fact, for every ID there is an equivalent symmetric DAN, but DANs can also represent asymmetric problems involving partial orderings of the decisions (order asymmetry), restrictions between the values of the variables (domain asymmetry), and conditional observability (information asymmetry). Symmetric DANs can be evaluated with the same algorithms as IDs. Every asymmetric DAN can be evaluated by converting it into an equivalent decision tree or, much more efficiently, by decomposing it into a tree of symmetric DANs. Given that DANs can solve symmetric problems as easily and as efficiently as IDs, and are more appropriate for asymmetric problems—which include virtually all real-world problems—DANs might replace IDs as the standard type of probabilistic graphical model for decision support and decision analysis. We also argue that DANs compare favorably with other formalisms proposed for asymmetric decision problems. In practice, DANs can be built and evaluated with OpenMarkov, a Java open-source package for probabilistic graphical models.
Editor(es) Decision analysis
Decision trees
Influence diagrams
Probabilistic graphical models
Asymmetric decision problems
Fecha 2018-05
Formato application/pdf
Identificador bibliuned:95-Fjdiez-0001
http://e-spacio.uned.es/fez/view/bibliuned:95-Fjdiez-0001
DOI - identifier 10.1016/j.ijar.2018.02.007
ISSN - identifier 0888-613X
Nombre de la revista International Journal of Approximate Reasoning
Número de Volumen 96
Página inicial 1
Página final 17
Publicado en la Revista International Journal of Approximate Reasoning
Idioma eng
Versión de la publicación acceptedVersion
Tipo de recurso Article
Derechos de acceso y licencia http://creativecommons.org/licenses/by-nc-nd/4.0
info:eu-repo/semantics/openAccess
Tipo de acceso Acceso abierto
Notas adicionales This is an Accepted Manuscript of an article published by Elsevier in International Journal of Approximate Reasoning, available at: https://doi.org/10.1016/j.ijar.2018.02.007
Notas adicionales Este es el manuscrito aceptado del artículo publicado por Elsevier en International Journal of Approximate Reasoning, disponible en línea: https://doi.org/10.1016/j.ijar.2018.02.007

 
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Creado: Wed, 07 Feb 2024, 02:50:54 CET