Population fluctuation promotes cooperation in networks
This work addresses the challenge of understanding cooperation evolution in network-structured populations, particularly for early evolutionary transitions, though it is incremental as it builds on prior EPA models.
The study tackled the problem of explaining cooperation emergence in dynamic networks by investigating population size fluctuations, finding that this fluctuating model is more robust and leads more securely to cooperation across various initial conditions and pre-existing non-cooperative networks.
We consider the problem of explaining the emergence and evolution of cooperation in dynamic network-structured populations. Building on seminal work by Poncela et al, which shows how cooperation (in one-shot prisoner's dilemma) is supported in growing populations by an evolutionary preferential attachment (EPA) model, we investigate the effect of fluctuations in the population size. We find that the fluctuating model is more robust than Poncela et al's in that cooperation flourishes for a wide variety of initial conditions. In terms of both the temptation to defect, and the types of strategies present in the founder network, the fluctuating population is found to lead more securely to cooperation. Further, we find that this model will also support the emergence of cooperation from pre-existing non-cooperative random networks. This model, like Poncela et al's, does not require agents to have memory, recognition of other agents, or other cognitive abilities, and so may suggest a more general explanation of the emergence of cooperation in early evolutionary transitions, than mechanisms such as kin selection, direct and indirect reciprocity.