Abstract

Certain social preference models have been proposed to explain fairness behavior in experimental games. Existing bodies of research on evolutionary games, however, explain the evolution of fairness merely through the self-interest agents. This paper attempts to analyze the ultimatum game's evolution on complex networks when a number of agents display social preference. Agents' social preference is modeled in three forms: fairness consideration or maintaining a minimum acceptable money level, inequality aversion, and social welfare preference. Different from other spatial ultimatum game models, the model in this study assumes that agents have incomplete information on other agents' strategies, so the agents need to learn and develop their own strategies in this unknown environment. Genetic Algorithm Learning Classifier System algorithm is employed to address the agents' learning issue. Simulation results reveal that raising the minimum acceptable level or including fairness consideration in a game does not always promote fairness level in ultimatum games in a complex network. If the minimum acceptable money level is high and not all agents possess a social preference, the fairness level attained may be considerably lower. However, the inequality aversion social preference has negligible effect on the results of evolutionary ultimatum games in a complex network. Social welfare preference promotes the fairness level in the ultimatum game. This paper demonstrates that agents' social preference is an important factor in the spatial ultimatum game, and different social preferences create different effects on fairness emergence in the spatial ultimatum game.

Highlights

  • 1.1 Classical game theory is not sufficient to explain the fairness or altruistic behavior commonly observed in social systems and experimental games

  • 4.1 An agent-based model has been designed to study the effects of various forms of social preference on fairness evolution in spatial ultimatum games

  • Many social preference models can explain the agent behavior in the experiment, a number are not as effective when the ultimatum game is extended to a network version

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Summary

Introduction

1.1 Classical game theory is not sufficient to explain the fairness or altruistic behavior commonly observed in social systems and experimental games. To resolve this issue, a number of researchers have deviated from the self-regarding rational choice paradigm in economics (Camerer 2003; Montet and Serra 2005 ) and have forwarded the social preference theory. Research on evolutionary games in network has likewise received significant attention. It has been accepted that the structure of agent interaction plays an important role in a significant number of spatial games. It is worth mentioning that in the evolution of spatial games, social preference has received negligible attention

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