When LLMs Recognize Your Space: Research on Experiences with Spatially Aware LLM Agents.

IF 6.5
Seungwoo Oh, Nakyoung An, Youngwug Cho, Myeongul Jung, Kwanguk Kenny Kim
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引用次数: 0

Abstract

Large language models (LLMs) have evolved into LLM agents that can use the user conversation context and respond according to the roles of the LLM agents. Recent studies have suggested that LLM-based agents can be used as human-like partners in social interactions. However, the role of the environmental context, particularly spatial information of user space, in the interaction between humans and LLM agents has not been explored. In this study, participants engaged in counselling conversations under three different conditions based on their spatial awareness levels. The dependent measures included copresence, trust, therapist alliances, and self-disclosure. The results suggested that participants in the condition where the LLM actively reflected spatial information generally reported higher levels of user experience. Interestingly, when the LLM actively reflected the spatial context of the user, the participants tended to describe themselves and express their emotions more. These findings suggest that spatially aware LLM agents can contribute to better social interactions between humans and LLM agents. Our findings can be used to design future augmented reality applications in the counselling, education, and healthcare industries.

当LLM识别你的空间:空间感知LLM代理的经验研究。
大型语言模型(LLM)已经演变成可以使用用户对话上下文并根据LLM代理的角色进行响应的LLM代理。最近的研究表明,基于llm的代理可以在社会互动中用作类似人类的伙伴。然而,环境背景的作用,特别是用户空间的空间信息,在人类和LLM代理之间的交互还没有被探索。在这项研究中,参与者根据他们的空间意识水平在三种不同的条件下进行咨询对话。依赖测量包括出席、信任、治疗师联盟和自我表露。结果表明,在LLM积极反映空间信息的情况下,参与者普遍报告了更高水平的用户体验。有趣的是,当LLM积极地反映用户的空间背景时,参与者倾向于更多地描述自己和表达自己的情绪。这些发现表明,空间感知的LLM代理可以促进人类与LLM代理之间更好的社会互动。我们的研究结果可用于设计未来在咨询、教育和医疗保健行业的增强现实应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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