Abstract

An active participation of players in evolutionary games depends on several factors, ranging from personal stakes to the properties of the interaction network. Diverse activity patterns thus have to be taken into account when studying the evolution of cooperation in social dilemmas. Here we study the weak prisoner's dilemma game, where the activity of each player is determined in a probabilistic manner either by its degree or by its payoff. While degree-correlated activity introduces cascading failures of cooperation that are particularly severe on scale-free networks with frequently inactive hubs, payoff-correlated activity provides a more nuanced activity profile, which ultimately hinders systemic breakdowns of cooperation. To determine optimal conditions for the evolution of cooperation, we introduce an exponential decay to payoff-correlated activity that determines how fast the activity of a player returns to its default state. We show that there exists an intermediate decay rate at which the resolution of the social dilemma is optimal. This can be explained by the emerging activity patterns of players, where the inactivity of hubs is compensated effectively by the increased activity of average-degree players, who through their collective influence in the network sustain a higher level of cooperation. The sudden drops in the fraction of cooperators observed with degree-correlated activity therefore vanish, and so does the need for the lengthy spatiotemporal reorganization of compact cooperative clusters. The absence of such asymmetric dynamic instabilities thus leads to an optimal resolution of social dilemmas, especially when the conditions for the evolution of cooperation are strongly adverse.

Highlights

  • The application of statistical physics to problems in evolutionary game theory has proven rewarding and conducive to inspiring results with a broad range of applicability [1,2,3,4,5,6,7,8]

  • To determine optimal conditions for the evolution of cooperation, we introduce an exponential decay to payoff-correlated activity that determines how fast the activity of a player returns to its default state

  • For degree-correlated activity and since the game is staged on a scale-free network, the cascading failures of cooperation, which are due to frequently inactive hubs, are clearly observable, especially for b = 2.1

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Summary

INTRODUCTION

The application of statistical physics to problems in evolutionary game theory has proven rewarding and conducive to inspiring results with a broad range of applicability [1,2,3,4,5,6,7,8]. The study of evolutionary dynamics and social dilemmas using methods borrowed from the physical sciences has been to a large degree motivated by the seminal work of Nowak and May [29], who showed that spatial structure might promote the evolution of cooperation through a mechanism that is referred to as network reciprocity [30]. Independent research from different groups demonstrated the importance of heterogeneity of agents for the successful evolution of cooperation, be it introduced in the form of heterogeneous interaction networks—note, that for the case of human interactions, it is not clear whether network reciprocity plays a key role [31,32]—noisy disturbances to payoffs, or other player-specific properties like. IV with a discussion of the broader implications of our conclusions

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