Collective action demands that individuals efficiently coordinate how much, where, and when to cooperate. Laboratory experiments have extensively explored the first part of this process, demonstrating that a variety of social-cognitive mechanisms influence how much individuals choose to invest in group efforts. However, experimental research has been unable to shed light on how social cognitive mechanisms contribute to the where and when of collective action. We leverage multi-agent deep reinforcement learning to model how a social-cognitive mechanism--specifically, the intrinsic motivation to achieve a good reputation--steers group behavior toward specific spatial and temporal strategies for collective action in a social dilemma. We also collect behavioral data from groups of human participants challenged with the same dilemma. The model accurately predicts spatial and temporal patterns of group behavior: in this public goods dilemma, the intrinsic motivation for reputation catalyzes the development of a non-territorial, turn-taking strategy to coordinate collective action.
翻译:实验室实验广泛探索了这一进程的第一部分,表明各种社会认知机制影响着个人对集体努力的投资;然而,实验性研究未能阐明社会认知机制如何有助于集体行动的地点和时间;我们利用多试剂的深层强化学习来模拟社会认知机制的具体特点,即为在社会两难状态中采取具体的集体行动而形成良好的声誉-时间-集体行为,其内在动机如何形成良好的声誉-集体行为;我们还从面临相同困境的人类参与者群体收集行为数据;该模型准确地预测了群体行为的空间和时间模式:在这种公益困境中,名声的内在动机催化了非地域-转变战略的协调集体行动。