角色扮演:对话角色作为人工智能辅助定性研究中的反思性实践框架

Luke Thominet, Jacqueline Amorim, Kristine Acosta, V. K. Sohan
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引用次数: 0

摘要

以往的文献表明,包括大型语言模型(LLM)聊天机器人在内的生成式人工智能(GAI)软件可能有助于定性研究。然而,我们仍然需要研究研究人员、GAI 技术、数据和研究结果之间的关系。为了满足这一需求,我们团队对 LLM 聊天机器人辅助研究项目中的反思性日志进行了专题分析。我们发现了研究人员所扮演的四种角色:管理人员密切监督 LLM 的工作,教师指导 LLM 的理论和方法,同事与 LLM 公开讨论数据,倡导者与 LLM 合作改善用户体验。规划和扮演多重角色也有助于丰富研究过程。本研究强调了在使用 GAI 技术进行定性研究时,将对话角色作为支持反身性的框架的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Role Play: Conversational Roles as a Framework for Reflexive Practice in AI-Assisted Qualitative Research
Previous literature has shown that generative artificial intelligence (GAI) software, including large language model (LLM) chatbots, might contribute to qualitative research studies. However, there is still a need to examine the relationships between researchers, GAI technologies, data, and findings. To address this need, our team conducted a thematic analysis of our reflexive journals from an LLM chatbot-assisted research project. We identified four roles that researchers adopted: managers closely monitored the LLM's work, teachers instructed the LLM on theories and methods, colleagues openly discussed the data with the LLM, and advocates worked with the LLM to improve user experiences. Planning for and playing with multiple roles also helped to enrich the research process. This study underscores the potential for using conversational roles as a framework to support reflexivity when working with GAI technologies on qualitative research.
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CiteScore
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