In this paper we propose a numerical algorithm able to describe the Stackelberg strategy for a multi level hierarchical 3-person game via genetic algorithm evolution process. There is only one player for each hierarchical level: an upper level leader (player L0), an intermediate level leader (player L1) who acts as a follower for L0 and as a leader for the lower level player (player F) that is the sole actual follower of the game. We present a computational result via genetic algorithm approach. The idea of the Stackelberg- GA is to bring together genetic algorithms and Stackelberg strategy in order to process a genetic algorithm to build the Stackelberg strategy. Any player acting as a follower makes his decision at each step of the evolutionary process, playing a simple optimisation problem whose solution is supposed to be unique. An application to an Authority-Provider-User (APU) model in the context of wireless networks is discussed. The algorithm convergence is illustrated by means of some test cases.

Three level hierarchical decision making model with GA

E. D'AMATO;
2014-01-01

Abstract

In this paper we propose a numerical algorithm able to describe the Stackelberg strategy for a multi level hierarchical 3-person game via genetic algorithm evolution process. There is only one player for each hierarchical level: an upper level leader (player L0), an intermediate level leader (player L1) who acts as a follower for L0 and as a leader for the lower level player (player F) that is the sole actual follower of the game. We present a computational result via genetic algorithm approach. The idea of the Stackelberg- GA is to bring together genetic algorithms and Stackelberg strategy in order to process a genetic algorithm to build the Stackelberg strategy. Any player acting as a follower makes his decision at each step of the evolutionary process, playing a simple optimisation problem whose solution is supposed to be unique. An application to an Authority-Provider-User (APU) model in the context of wireless networks is discussed. The algorithm convergence is illustrated by means of some test cases.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11367/78089
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