Strategy and fairness in repeated two-agent interaction
Refereed conference paper presented and published in conference proceedings

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AbstractThe criterion of fairness has not been given much attention in the research of multi-agent learning problem. We propose an adaptive strategy for agents to achieve fairness in repeated two-agent game with conflicting interests. In our strategy, each agent is equipped with inequity-averse based fairness model, and makes its decision according to its attractiveness for each action. Besides, each agent adjusts its own attitudes in an adaptive way on the basis of previous outcome and the payoff distribution of the agents in the system, and our goal is to reach fairness in the sense of obtaining equal accumulated payoffs for each agent. Simulation results show that agents using our strategy can coordinate well with each other and achieve fairness with less payoff cost than previous work. © 2010 IEEE.
All Author(s) ListHao J., Leung H.-F.
Name of Conference22nd International Conference on Tools with Artificial Intelligence, ICTAI 2010
Start Date of Conference27/10/2010
End Date of Conference29/10/2010
Place of ConferenceArras
Country/Region of ConferenceFrance
Detailed descriptionorganized by IEEE
Volume Number2
Pages3 - 6
LanguagesEnglish-United Kingdom

Last updated on 2021-01-03 at 02:11