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A Multi-Objective Evolutionary Algorithm for enhancing Bayesian Networks hybrid-based modeling

Autores

GARCÍA ALONSO, CARLOS, CAMPOY MUÑOZ, MARÍA DEL PILAR, SALAZAR ORDÓÑEZ, MELANIA

Publicación externa

No

Medio

Comput. Math. Appl.

Alcance

Article

Naturaleza

Científica

Cuartil JCR

Cuartil SJR

Impacto JCR

1.996

Impacto SJR

1.295

Fecha de publicacion

01/12/2013

ISI

000327415000021

Scopus Id

2-s2.0-84887016659

Abstract

Bayesian Networks are increasingly being used to model complex socio-economic systems by expert knowledge elicitation even when data is scarce or does not exist. In this paper, a Multi-Objective Evolutionary Algorithm (MOEA) is presented for assessing the parameters (input relevance/weights) of fuzzy dependence relationships in a Bayesian Network (BN). The MOEA was designed to include a hybrid model that combines Monte-Carlo simulation and fuzzy inference. The MOEA-based prototype assesses the input weights of fuzzy dependence relationships by learning from available output data. In socio-economic systems, the determination of how a specific input variable affects the expected results can be critical and it is still one of the most important challenges in Bayesian modeling. The MOEA was checked by estimating the migrant stock as a relevant variable in a BN model for forecasting remittances. For a specific year, results showed similar input weights than those given by economists but it is very computationally demanding. The proposed hybrid-approach is an efficient procedure to estimate output values in BN. (C) 2013 Elsevier Ltd. All rights reserved.

Palabras clave

Multi-Objective Evolutionary Algorithms; Fuzzy inference; Bayesian networks; Monte-Carlo simulation; Remittances