Chen Yu-Zhong, Lai Ying-Cheng
School of Electrical, Computer and Energy Engineering, Arizona State University, Tempe, Arizona 85287, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Oct;86(4 Pt 2):045101. doi: 10.1103/PhysRevE.86.045101. Epub 2012 Oct 11.
Cooperation has been recognized as a fundamental driving force in many natural, social, and economic systems. We investigate whether, given a complex-networked system in which agents (nodes) interact with one another according to the rules of evolutionary games and are subject to failure or death, cooperation can prevail and be optimized. We articulate a control scheme to maximize cooperation by introducing a time tolerance, a time duration that sustains an agent even if its payoff falls below a threshold. Strikingly, we find that a significant cooperation cluster can emerge when the time tolerance is approximately uniformly distributed over the network. A heuristic theory is derived to understand the optimization mechanism, which emphasizes the role played by medium-degree nodes. Implications for policy making to prevent or mitigate large-scale cascading breakdown are pointed out.
合作已被公认为许多自然、社会和经济系统中的一种基本驱动力。我们研究在一个复杂网络系统中,给定其中的主体(节点)根据进化博弈规则相互作用且会遭受故障或死亡的情况下,合作是否能够盛行并得到优化。我们阐述了一种控制方案,通过引入一个时间容忍度(即即使主体的收益低于阈值也能维持该主体的持续时间)来最大化合作。令人惊讶的是,我们发现当时间容忍度在网络上近似均匀分布时,会出现一个显著的合作集群。我们推导出一种启发式理论来理解这种优化机制,该理论强调中度节点所起的作用。文中指出了对预防或减轻大规模级联故障的政策制定的启示。