社会心理学
一致性
人口
集体行动
社会困境
困境
社会团体
心理学
群体凝聚力
文化群体选择
文化多样性
心理弹性
包容性健身
凝聚力(化学)
进化动力学
实证经济学
动作(物理)
社会制度
连贯性(哲学赌博策略)
社会学
人际关系
共同进化
社会偏好
社会关系
囚徒困境
应对(心理学)
相互依存
社会动力
偏爱
进化博弈论
民主
社会学习
规范的社会影响
社会影响力
作者
Filippo Zimmaro,Jacopo Grilli,Mirta Galešić,Alexander J. Stewart
标识
DOI:10.1073/pnas.2525139123
摘要
Successful collective action on issues from climate change to the maintenance of democracy depends on societal properties such as cultural tightness and social cohesion. How these properties evolve is not well understood because they emerge from a complex interplay between beliefs and behaviors that are usually modeled separately. Here, we address this challenge by developing a game-theoretic framework incorporating norm-utility models to study the coevolutionary dynamics of cooperative behavior, expressed belief, and norm-utility preferences. We show that the introduction of evolving beliefs and preferences into the Snowdrift game and Prisoner's Dilemma leads to a proliferation of evolutionary stable equilibria, each with different societal properties. In particular, we find that reduced material benefits from cooperation can be associated with an expected increase in cultural tightness (the degree to which norms are strong and shared, so that individuals behave in accordance with widely held beliefs) and an expected reduction in social homogeneity and cohesion (the extent to which individuals belong to a single well-defined group with similar beliefs, behaviors, and preferences). Loss of social homogeneity occurs via a process of evolutionary branching, in which a population fragments into two distinct social groups with strikingly different characteristics. The groups that emerge differ not only in their willingness to cooperate, but also in their expressed beliefs about cooperation and in their preferences for conformity and coherence of their behaviors and expressed beliefs. These results have implications for our understanding of the resilience of cooperation and collective action in times of crisis.
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