Humans have developed considerable machinery used at scale to create policies and to distribute incentives, yet we are forever seeking ways in which to improve upon these, our institutions. Especially when funding is limited, it is imperative to optimise spending without sacrificing positive outcomes, a challenge which has often been approached within several areas of social, life and engineering sciences. These studies often neglect the availability of information, cost restraints, or the underlying complex network structures, which define real-world populations. Here, we have extended these models, including the aforementioned concerns, but also tested the robustness of their findings to stochastic social learning paradigms. Akin to real-world decisions on how best to distribute endowments, we study several incentive schemes, which consider information about the overall population, local neighbourhoods, or the level of influence which a cooperative node has in the network, selectively rewarding cooperative behaviour if certain criteria are met. Following a transition towards a more realistic network setting and stochastic behavioural update rule, we found that carelessly promoting cooperators can often lead to their downfall in socially diverse settings. These emergent cyclic patterns not only damage cooperation, but also decimate the budgets of external investors. Our findings highlight the complexity of designing effective and cogent investment policies in socially diverse populations.
翻译:人类已经发展了规模庞大的机制,用于制定政策和分配奖励措施,但我们却永远在寻求改善这些制度的方法,特别是当资金有限时,必须优化支出,而不牺牲积极的成果,这是社会、生命和工程科学若干领域经常遇到的挑战。这些研究往往忽视信息、成本限制或界定现实世界人口的基本复杂网络结构的可用性,我们在这里将这些模式,包括上述关切,也测试了这些模式的可靠性,使其调查结果转化为不切实际的社会学习模式。类似于关于如何最佳分配捐赠品的现实世界决定,我们研究若干奖励计划,其中考虑到关于整个人口、地方居民区或合作节点在网络中的影响程度的信息,如果达到某些标准,则有选择地奖励合作行为。在向更现实的网络设置和质疑行为更新规则过渡后,我们发现不小心地促进协作者往往导致他们在社会多样性环境中的衰败。这些新兴的周期模式不仅损害合作,而且破坏外部投资者的有效投资预算的复杂程度。