Comprehensive minimum cost models for large scale group decision making with consistent fuzzy preference relations
Fecha
2021-03
Título de la revista
ISSN de la revista
Título del volumen
Editor
Elsevier
Resumen
Nowadays, society demands group decision making (GDM) problems that require the participation of
a large number of experts, so-called large scale group decision making (LS-GDM) problems. Logically,
the more experts are involved in the decision making process, the more common is the emergence
of disagreements in the group. For this reason, consensus reaching processes (CRPs) are key in the
resolution of these problems in order to smooth such disagreements in the group and reach consensual
solutions. A CRP requires that experts are receptive to change their initial preferences, but demanding
excessive changes could lead to deadlocks. The well-known minimum cost consensus (MCC) model
allows to obtain an agreed solution by preserving experts’ preferences as much as possible. However,
this MCC model only considers the distance among experts and collective opinion, which is not
enough to guarantee a desired degree of consensus. To overcome this limitation, it was proposed
comprehensive MCC models (CMCC) in which both consensus degree and distance are considered, and
CMCC models deal with fuzzy preference relations (FPRs) for modeling experts’ opinions. However,
these models are not efficient to deal with LS-GDM problems and the FPRs consistency is ignored in
them. Therefore, this paper aims to propose new CMCC models focused on LS-GDM problems in which
experts use FPRs whose consistency is taken into account in order to obtain reliable results. A case
study is introduced to show the effectiveness of the proposed models.
Descripción
Palabras clave
Large scale group decision making, Minimum cost model, Fuzzy preference relation, Consistency
Citación
R.M. Rodríguez, Á. Labella, B. Dutta, L. Martínez. Comprehensive minimum cost models for large scale group decision making with consistent fuzzy preference relations. Knowledge-Based Systems, vol. 215, p. 106780, 2021.