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'I Like Sunnie More Than I Expected!': Exploring User Expectation and Perception of an Anthropomorphic LLM-based Conversational Agent for Well-Being Support

Authors :
Wu, Siyi
Cachia, Julie Y. A.
Han, Feixue
Yao, Bingsheng
Xie, Tianyi
Zhao, Xuan
Wang, Dakuo
Publication Year :
2024

Abstract

The human-computer interaction (HCI) research community has a longstanding interest in exploring the mismatch between users' actual experiences and expectation toward new technologies, for instance, large language models (LLMs). In this study, we compared users' (N = 38) initial expectations against their post-interaction perceptions of two LLM-powered mental well-being intervention activity recommendation systems. Both systems have a built-in LLM to recommend a personalized well-being intervention activity, but one system (Sunnie) has an anthropomorphic conversational interaction design via elements such as appearance, persona, and natural conversation. Results showed that user engagement was high with both systems, and both systems exceeded users' expectations along the utility dimension, highlighting AI's potential to offer useful intervention activity recommendations. In addition, Sunnie further outperformed the non-anthropomorphic baseline system in relational warmth. These findings suggest that anthropomorphic conversational interaction design may be particularly effective in fostering warmth in mental health support contexts.<br />Comment: In Submission

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.13803
Document Type :
Working Paper