Consensus building is inherently challenging due to the diverse opinions held by stakeholders. Effective facilitation is crucial to support the consensus building process and enable efficient group decision making. However, the effectiveness of facilitation is often constrained by human factors such as limited experience and scalability. In this research, we propose a Parallel Thinking-based Facilitation Agent (PTFA) that facilitates online, text-based consensus building processes.The PTFA automatically collects real-time textual input and leverages large language models (LLMs)to perform all six distinct roles of the well-established Six Thinking Hats technique in parallel thinking.To illustrate the potential of the agent, a pilot study was conducted, demonstrating its capabilities in idea generation, emotional probing, and deeper analysis of idea quality. Additionally, future open research challenges such as optimizing scheduling and managing behaviors in divergent phase are identified. Furthermore, a comprehensive dataset that contains not only the conversational content among the participants but also between the participants and the agent is constructed for future study.
翻译:共识构建因利益相关者观点各异而具有内在挑战性。有效的促进对于支持共识构建过程和实现高效群体决策至关重要。然而,促进的有效性常受限于人类因素,如经验不足和可扩展性问题。本研究提出一种基于并行思维的促进智能体(PTFA),用于促进在线、基于文本的共识构建过程。该智能体自动收集实时文本输入,并利用大语言模型并行执行成熟的“六顶思考帽”技术中的所有六个不同角色。为说明该智能体的潜力,我们进行了一项试点研究,展示了其在观点生成、情感探查以及观点质量的深度分析方面的能力。此外,研究还指出了未来的开放性研究挑战,例如优化调度和管理发散阶段的行为。同时,本研究构建了一个全面的数据集,不仅包含参与者之间的对话内容,还包括参与者与智能体之间的交互内容,以供未来研究使用。