Title :
A weighted sum genetic algorithm to support multiple-party multiple-objective negotiations
Author :
Rubenstein-Montano, Bonnie ; Malaga, Ross A.
Author_Institution :
McDonough Sch. of Bus., Georgetown Univ., Washington, DC, USA
fDate :
8/1/2002 12:00:00 AM
Abstract :
Negotiations are a special class of group decision-making problems that can be formulated as constrained optimization problems and are characterized by high degrees of conflict among the negotiation participants. A variety of negotiation support techniques have been used to help find solutions acceptable to all parties in a negotiation. The paper presents an approach that employs a genetic algorithm (GA) for finding acceptable solutions for multiparty multiobjective negotiations. The GA approach is consistent with the complex nature of real-world negotiations and is therefore capable of addressing more realistic negotiation scenarios than previous techniques in the literature allow. In addition to the traditional genetic operators of reproduction, crossover, and mutation, the search is enhanced with a new operator called trade. The trade operator simulates concessions that might be made by parties during the negotiation process. GA performance with the trade operator is compared to a traditional GA, nonlinear programming, a hill-climber, and a random search. Experimental results show the GA with the trade operator performs better than these other more traditional approaches
Keywords :
genetic algorithms; group decision support systems; negotiation support systems; operations research; search problems; GA approach; GA performance; concession simulation; constrained optimization problems; genetic algorithm; genetic operators; group decision making problems; hill-climber; multicriterion optimization; multiple-party multiple-objective negotiations; negotiation participants; negotiation support techniques; nonlinear programming; random search; real-world negotiations; realistic negotiation scenarios; trade operator; weighted sum genetic algorithm; Constraint optimization; Decision making; Evolutionary computation; Genetic algorithms; Genetic mutations; History; Humans; Machine learning; Optimization methods; Terrorism;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2002.802874