Abstract :
In this paper, we extend TOPSIS (technique for order preference by similarity to ideal solution) by three approaches to aggregating group preferences, in order to solve multiple attribute decision analysis (MADA) problems in the situation of belief group decision making (BGDM), where the attribute evaluation of each decision maker (DM) is represented by the bba (basic belief assignment), the applied foundation of Dempster-Shafer theory (DST). Corresponding to three approaches, three extended TOPSIS models, the premodel, the postmodel, and the intermodel, are elaborated step by step, which are used to find solutions to BGDM. In three extended models, the aggregation of group preferences depends on some rules of evidence combination, some social choice functions, and some mean approaches, respectively. Furthermore, a numerical example clearly illustrates the procedures of three extended models for BGDM.
Keywords :
belief maintenance; decision making; fuzzy set theory; inference mechanisms; operations research; Dempster-Shafer theory; MADA problems; basic belief assignment; belief group decision making; extended TOPSIS models; fuzzy data; group preference aggregation; intermodel; multiple attribute decision analysis; order preference technique; postmodel; premodel; Aggregates; Chaos; Conference management; Decision making; Delta modulation; Engineering management; Fuzzy set theory; Fuzzy sets; Technology management; TOPSIS; basic belief assignment; belief group decision making; belief preferences aggregation;