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首页> 外文期刊>Communications in Theoretical Physics >Evolution of Cooperation in Continuous Prisoner's Dilemma Games on Barabasi–Albert Networks with Degree-Dependent Guilt Mechanism
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Evolution of Cooperation in Continuous Prisoner's Dilemma Games on Barabasi–Albert Networks with Degree-Dependent Guilt Mechanism

机译:基于度的内Gui机制的Barabasi-Albert网络上连续囚徒困境博弈合作的演变

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This paper studies the continuous prisoner's dilemma games (CPDG) on Barabasi–Albert (BA) networks. In the model, each agent on a vertex of the networks makes an investment and interacts with all of his neighboring agents. Making an investment is costly, but which benefits its neighboring agents, where benefit and cost depend on the level of investment made. The payoff of each agent is given by the sum of payoffs it receives in its interactions with all its neighbors. Not only payoff, individual's guilty emotion in the games has also been considered. The negative guilty emotion produced in comparing with its neighbors can reduce the utility of individuals directly. We assume that the reduction amount depends on the individual's degree and a baseline level parameter. The group's cooperative level is characterized by the average investment of the population. Each player makes his investment in the next step based on a convex combination of the investment of his best neighbors in the last step, his best history strategies in the latest steps which number is controlled by a memory length parameter, and a uniformly distributed random number. Simulation results show that this degree-dependent guilt mechanism can promote the evolution of cooperation dramatically comparing with degree-independent guilt or no guilt cases. Imitation, memory, uncertainty coefficients and network structure also play determinant roles in the cooperation level of the population. All our results may shed some new light on studying the evolution of cooperation based on network reciprocity mechanisms.
机译:本文研究了Barabasi–Albert(BA)网络上的连续囚徒困境游戏(CPDG)。在模型中,网络顶点上的每个代理进行投资并与其所有相邻代理进行交互。进行投资成本高昂,但会使邻近的代理商受益,其收益和成本取决于所投资的水平。每个代理的收益是由其与所有邻居的互动中获得的收益之和得出的。不仅可以得到回报,还可以考虑个人在游戏中的内emotion感。与邻居相比产生的负罪感会直接降低个人的效用。我们假设减少量取决于个人的程度和基线水平参数。该小组的合作水平以人口的平均投资为特征。每个玩家都基于在最后一步中他最好的邻居的投资,在最近步骤中他的最佳历史策略(由内存长度参数控制数字)和均匀分布的随机数的凸组合来进行下一步的投资。 。仿真结果表明,这种与程度无关的内or或无内no的情况相比,这种程度相关的内机制可以极大地促进合作的发展。模仿,记忆,不确定性系数和网络结构在人口合作水平中也起着决定性作用。我们所有的结果都可能为研究基于网络互惠机制的合作演变提供新的思路。

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