不屈不挠的策略在空间种群中引导合作并抑制勒索

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-31 DOI:10.1088/1367-2630/ad668b
Zijie Chen, Yuxin Geng, Xingru Chen, Feng Fu
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引用次数: 0

摘要

网络演化博弈动力学通常考虑简单策略之间的竞争,如 "囚徒困境"(Prisoner's Dilemma)中的合作与叛逃,并将种群结构的影响总结为网络互惠。然而,对于重复博弈中通常考虑的涉及多种强力策略的演化动态,如零判定(ZD)策略(这些策略能够在它们与其共同博弈者之间强制执行线性报酬关系),人们在很大程度上仍然一无所知。在此,我们基于常用的死亡-出生更新,考虑了总是合作(AllC)、敲诈ZD(敲诈者)和不屈不挠的棋手在格子群中的演化动态。在可以促进敲诈者之间互惠合作和公平的不弯曲策略中,我们考虑了一种通过粒子群优化(PSO)的机器学习方法预先优化的候选策略,称为 PSO 赌徒。我们得出了弱选择和罕见突变条件下的分析结果,包括成对固定概率和策略的长期频率。在不存在第三种不弯曲类型的情况下,敲诈者可以在敲诈系数足够大的情况下,与无条件合作者达成一半一半的均衡。然而,不屈不挠者的存在从根本上改变了动态,使系统倾向于不屈不挠的合作。最令人惊讶的是,无论敲诈者的敲诈系数有多大,他们根本无法占据主导地位,而且不妥协者的长期频率几乎保持不变。我们的分析方法适用于研究结构化种群中多种策略的进化动态。我们的研究深入揭示了网络互惠与直接互惠之间的相互作用,揭示了不弯曲策略在实施公平和抑制敲诈方面的作用。
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Unbending strategies shepherd cooperation and suppress extortion in spatial populations
Evolutionary game dynamics on networks typically consider the competition among simple strategies such as cooperation and defection in the Prisoner’s Dilemma and summarize the effect of population structure as network reciprocity. However, it remains largely unknown regarding the evolutionary dynamics involving multiple powerful strategies typically considered in repeated games, such as the zero-determinant (ZD) strategies that are able to enforce a linear payoff relationship between them and their co-players. Here, we consider the evolutionary dynamics of always cooperate (AllC), extortionate ZD (extortioners), and unbending players in lattice populations based on the commonly used death-birth updating. Out of the class of unbending strategies that can foster reciprocal cooperation and fairness among extortionate players, we consider a particular candidate, pre-optimized through the machine-learning method of particle swarm optimization (PSO), called PSO Gambler. We derive analytical results under weak selection and rare mutations, including pairwise fixation probabilities and long-term frequencies of strategies. In the absence of the third unbending type, extortioners can achieve a half-half split in equilibrium with unconditional cooperators for sufficiently large extortion factors. However, the presence of unbending players fundamentally changes the dynamics and tilts the system to favor unbending cooperation. Most surprisingly, extortioners cannot dominate at all regardless of how large their extortion factor is, and the long-term frequency of unbending players is maintained almost as a constant. Our analytical method is applicable to studying the evolutionary dynamics of multiple strategies in structured populations. Our work provides insights into the interplay between network reciprocity and direct reciprocity, revealing the role of unbending strategies in enforcing fairness and suppressing extortion.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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