Modern engineered systems increasingly involve complex sociotechnical environments where multiple agents, including humans and the emerging paradigm of agentic AI powered by large language models, must navigate social dilemmas that pit individual interests against collective welfare. As engineered systems evolve toward multi-agent architectures with autonomous LLM-based agents, traditional governance approaches using static rules or fixed network structures fail to address the dynamic uncertainties inherent in real-world operations. This paper presents a novel framework that integrates adaptive governance mechanisms directly into the design of sociotechnical systems through a unique separation of agent interaction networks from information flow networks. We introduce a system comprising strategic LLM-based system agents that engage in repeated interactions and a reinforcement learning-based governing agent that dynamically modulates information transparency. Unlike conventional approaches that require direct structural interventions or payoff modifications, our framework preserves agent autonomy while promoting cooperation through adaptive information governance. The governing agent learns to strategically adjust information disclosure at each timestep, determining what contextual or historical information each system agent can access. Experimental results demonstrate that this RL-based governance significantly enhances cooperation compared to static information-sharing baselines.
翻译:现代工程系统日益涉及复杂的社会技术环境,其中多个智能体(包括人类和由大型语言模型驱动的智能体人工智能这一新兴范式)必须应对个体利益与集体福祉相冲突的社会困境。随着工程系统向基于自主LLM智能体的多智能体架构演进,采用静态规则或固定网络结构的传统治理方法无法应对现实世界运行中固有的动态不确定性。本文提出一种新颖框架,通过将智能体交互网络与信息流网络独特分离,将自适应治理机制直接集成到社会技术系统的设计中。我们引入一个系统,包含参与重复交互的基于LLM的战略系统智能体,以及一个通过强化学习动态调节信息透明度的治理智能体。与需要直接结构干预或收益修改的传统方法不同,我们的框架通过自适应信息治理在保持智能体自主性的同时促进合作。治理智能体学习在每个时间步战略性地调整信息披露,决定每个系统智能体可访问的上下文或历史信息。实验结果表明,与静态信息共享基线相比,这种基于强化学习的治理显著提升了合作水平。