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Learning and Innovative Elements of Strategy Adoption Rules Expand Cooperative Network Topologies

机译:策略采用规则的学习和创新元素扩展了合作网络拓扑

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摘要

Cooperation plays a key role in the evolution of complex systems. However, the level of cooperation extensively varies with the topology of agent networks in the widely used models of repeated games. Here we show that cooperation remains rather stable by applying the reinforcement learning strategy adoption rule, Q-learning on a variety of random, regular, small-word, scale-free and modular network models in repeated, multi-agent Prisoner's Dilemma and Hawk-Dove games. Furthermore, we found that using the above model systems other long-term learning strategy adoption rules also promote cooperation, while introducing a low level of noise (as a model of innovation) to the strategy adoption rules makes the level of cooperation less dependent on the actual network topology. Our results demonstrate that long-term learning and random elements in the strategy adoption rules, when acting together, extend the range of network topologies enabling the development of cooperation at a wider range of costs and temptations. These results suggest that a balanced duo of learning and innovation may help to preserve cooperation during the re-organization of real-world networks, and may play a prominent role in the evolution of self-organizing, complex systems.
机译:合作在复杂系统的演进中起着关键作用。但是,在广泛使用的重复游戏模型中,合作水平随代理网络的拓扑结构而变化很大。在这里,我们证明了通过应用强化学习策略采用规则,在重复的多智能体囚徒困境和霍克策略中的各种随机,规则,小词,无标度和模块化网络模型上进行Q学习,合作仍然保持稳定。鸽子游戏。此外,我们发现,使用上述模型系统,其他长期学习策略采用规则也可以促进合作,同时在策略采用规则中引入低水平的噪音(作为创新模型)可以使合作程度较少依赖于实际的网络拓扑。我们的结果表明,长期采取的策略结合策略采用随机学习的原则,可以扩大网络拓扑的范围,从而以更广泛的成本和诱惑力促进合作的发展。这些结果表明,平衡的学习与创新二人组可能有助于在重组现实网络的过程中保持合作关系,并且可能在自组织,复杂系统的演进中发挥重要作用。

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