Managing the consensus in group decision making in an unbalanced fuzzy linguistic context with incomplete information
Identificadores
URI: http://hdl.handle.net/10481/5678Metadata
Show full item recordMateria
Group decision making Unbalanced linguistic term set Incomplete information Consensus Consistency
Date
2010Referencia bibliográfica
F.J. Cabrerizo, I.J. Pérez, E. Herrera-Viedma, Managing the Consensus in Group Decision Making in an Unbalanced Fuzzy Linguistic Context with Incomplete Information. Knowledge-Based Systems 23:2 (2010), 169-181.
Abstract
To solve group decision making problems we have to take in account different aspects. On the one hand,
depending on the problem, we can deal with different types of information. In this way, most group decision
making problems based on linguistic approaches use symmetrically and uniformly distributed linguistic term
sets to express experts opinions. However, there exist problems whose assessments need to be represented
by means of unbalanced linguistic term sets, i.e., using term sets which are not uniformly and symmetrically
distributed. On the other hand, there may be cases in which experts do not have an in-depth knowledge of
the problem to be solved. In such cases, experts may not put their opinion forward about certain aspects of
the problem and, as a result, they may present incomplete information. The aim of this paper is to present
a consensus model to help experts in all phases of the consensus reaching process in group decision making
problems in an unbalanced fuzzy linguistic context with incomplete information. As part of this consensus
model, we propose an iterative procedure using consistency measures to estimate the incomplete information.
In addition, the consistency measures are used together with consensus measures to guided the consensus model.
The main novelty of this consensus model is that it supports the management of incomplete unbalanced fuzzy
linguistic information and it allows to achieve consistent solutions with a great level of agreement.