论文标题
合作行为的启发式方法选择动力学
Dynamics of heuristics selection for cooperative behaviour
论文作者
论文摘要
涉及合作行为的情况在动物和人类中都普遍存在。游戏理论和进化动力学提供了理论和计算基础,以了解允许这种合作的机制。该领域的研究通常考虑不同的行为策略,并研究如何在不断发展的规则下将其固定在人群中。但是,这些策略如何从基本的进化机制中出现,尚未完全理解。为了解决这个问题,我们在这里通过基于进化算法的启发式方法选择模型研究了合作策略的出现。在拟议的模型中,代理商根据其遗传代码指定的启发式方法与其他玩家进行互动,并以更长的时间尺度繁殖与他们的健康相称。我们表明,该系统可以通过启发式方法选择而发展为低突变率的合作制度,同时增加突变会降低合作水平。我们对可能策略的分析表明,互惠和惩罚是合作的主要要素,是有条件合作的策略。此外,我们表明,如果除了行为规则外,还包括遗传相关性,那么亲属关系也起着相关的作用。我们的结果表明,我们的进化启发式模型是研究合作行为演变的通用和强大的工具。
Situations involving cooperative behaviour are widespread among animals and humans alike. Game theory and evolutionary dynamics have provided the theoretical and computational grounds to understand what are the mechanisms that allow for such cooperation. Studies in this area usually take into consideration different behavioural strategies and investigate how they can be fixed in the population under evolving rules. However, how those strategies emerged from basic evolutionary mechanisms continues to be not fully understood. To address this issue, here we study the emergence of cooperative strategies through a model of heuristics selection based on evolutionary algorithms. In the proposed model, agents interact with other players according to a heuristic specified by their genetic code and reproduce -- at a longer time scale -- proportionally to their fitness. We show that the system can evolve to cooperative regimes for low mutation rates through heuristics selection while increasing the mutation decreases the level of cooperation. Our analysis of possible strategies shows that reciprocity and punishment are the main ingredients for cooperation to emerge, being conditional cooperation the more frequent strategy. Additionally, we show that if in addition to behavioural rules, genetic relatedness is included, then kinship plays a relevant role. Our results illustrate that our evolutionary heuristics model is a generic and powerful tool to study the evolution of cooperative behaviour.