Ge Xin, He Xi, Yang Jian, Zhao Yixiang, Liu Yue, Li Lili
College of Information Science and Technology, Dalian Maritime University, Dalian, 116026, China.
College of Marine Electrical Engineering, Dalian Maritime University, Dalian, 116026, China.
Sci Rep. 2024 Jul 23;14(1):16932. doi: 10.1038/s41598-024-67871-4.
Understanding large-scale cooperation among related individuals has been one of the largest challenges. Since humans are in multiple social networks, the theoretical framework of multilayer networks is perfectly suited for studying this fascinating aspect of our biology. To that effect, we here study the cooperation in evolutionary game on interdependent networks. Importantly, a part of players are set to adopt Discrepant Accumulations Strategy. Players employing this mechanism not only use their payoffs in the multilayer network as the basis for the updating process as in previous experiments, but also take into account the similarities and differences in strategies across different layers. Monte Carlo simulations demonstrate that considering the similarities and differences in strategies across layers when calculating fitness can significantly enhance the cooperation level in the system. By examining the behavior of different pairing modes within cooperators and defectors, the equilibrium state can be attributed to the evolution of correlated pairing modes between interdependent networks. Our results provide a theoretical analysis of the group cooperation induced by the Discrepant Accumulations Strategy. And we also discuss potential implications of these findings for future human experiments concerning the cooperation on multilayer networks.
理解相关个体之间的大规模合作一直是最大的挑战之一。由于人类处于多个社会网络中,多层网络的理论框架非常适合研究我们生物学中这一引人入胜的方面。为此,我们在此研究相互依存网络上进化博弈中的合作。重要的是,一部分参与者被设定采用差异累积策略。采用这种机制的参与者不仅像之前的实验那样将他们在多层网络中的收益作为更新过程的基础,还会考虑不同层之间策略的异同。蒙特卡罗模拟表明,在计算适应度时考虑层间策略的异同可以显著提高系统中的合作水平。通过研究合作者和背叛者内部不同配对模式的行为,平衡状态可归因于相互依存网络之间相关配对模式的演变。我们的结果为差异累积策略引发的群体合作提供了理论分析。并且我们还讨论了这些发现对未来关于多层网络合作的人类实验的潜在影响。