Teaching Probabilistic Graphical Models with OpenMarkov

Díez, Francisco Javier, Arias, Manuel, Pérez-Martín, Jorge y Luque, Manuel . (2022) Teaching Probabilistic Graphical Models with OpenMarkov. Mathematics

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Título Teaching Probabilistic Graphical Models with OpenMarkov
Autor(es) Díez, Francisco Javier
Arias, Manuel
Pérez-Martín, Jorge
Luque, Manuel
Materia(s) Ingeniería Informática
Abstract OpenMarkov is an open-source software tool for probabilistic graphical models. It has been developed especially for medicine, but has also been used to build applications in other fields and for tuition, in more than 30 countries. In this paper we explain how to use it as a pedagogical tool to teach the main concepts of Bayesian networks and influence diagrams, such as conditional dependence and independence, d-separation, Markov blankets, explaining away, optimal policies, expected utilities, etc., and some inference algorithms: logic sampling, likelihood weighting, and arc reversal. The facilities for learning Bayesian networks interactively can be used to illustrate step by step the performance of the two basic algorithms: search-and-score and PC.
Palabras clave OpenMarkov
Bayesian Networks
d-separation
inference
Learning Bayesian Networks
Editor(es) MDPI
Fecha 2022-11-30
Formato application/pdf
Identificador bibliuned:95-Fjdiez-0004
http://e-spacio.uned.es/fez/view/bibliuned:95-Fjdiez-0004
DOI - identifier 10.3390/math10193577
ISSN - identifier 2227-7390
Nombre de la revista Mathematics
Número de Volumen 10
Número de Issue 9
Publicado en la Revista Mathematics
Idioma eng
Versión de la publicación publishedVersion
Tipo de recurso Article
Derechos de acceso y licencia http://creativecommons.org/licenses/by/4.0
info:eu-repo/semantics/openAccess
Tipo de acceso Acceso abierto
Notas adicionales Originally published by MDPI in Mathematics: https://doi.org/10.3390/math10193577
Notas adicionales Publicado por MDPI en Mathematics: https://doi.org/10.3390/math10193577

 
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Creado: Wed, 07 Feb 2024, 03:08:32 CET