Adaptive Payoff-driven Interaction in Networked Snowdrift Games
Identificadores
URI: https://hdl.handle.net/10481/97252Metadatos
Mostrar el registro completo del ítemFecha
2024Referencia bibliográfica
Chaos, Sol. and Fractals 185, 115187
Resumen
In social dilemmas, most interactions are transient and susceptible to restructuring, leading
to continuous changes in social networks over time. Typically, agents assess the rewards of
their current interactions and adjust their connections to optimize outcomes. In this paper,
we introduce an adaptive network model in the snowdrift game to examine dynamic levels of
cooperation and network topology, involving the potential for both the termination of existing
connections and the establishment of new ones. In particular, we define the agent’s asymmetric
disassociation tendency toward their neighbors, which fundamentally determines the probability
of edge dismantlement. The mechanism allows agents to selectively sever and rewire their
connections to alternative individuals to refine partnerships. Our findings reveal that adaptive
networks are particularly effective in promoting a robust evolution toward states of either pure
cooperation or complete defection, especially under conditions of extreme cost-benefit ratios, as
compared to static network models. Moreover, the dynamic restructuring of connections and the
distribution of network degrees among agents are closely linked to the levels of cooperation in
stationary states. Specifically, cooperators tend to seek broader neighborhoods when confronted
with the invasion of multiple defectors.




