Engagement and Disclosures in LLM-Powered Cognitive Behavioral Therapy Exercises: A Factorial Design Comparing the Influence of a Robot vs. Chatbot Over Time (2506.17831v1)
Abstract: Many researchers are working to address the worldwide mental health crisis by developing therapeutic technologies that increase the accessibility of care, including leveraging LLM capabilities in chatbots and socially assistive robots (SARs) used for therapeutic applications. Yet, the effects of these technologies over time remain unexplored. In this study, we use a factorial design to assess the impact of embodiment and time spent engaging in therapeutic exercises on participant disclosures. We assessed transcripts gathered from a two-week study in which 26 university student participants completed daily interactive Cognitive Behavioral Therapy (CBT) exercises in their residences using either an LLM-powered SAR or a disembodied chatbot. We evaluated the levels of active engagement and high intimacy of their disclosures (opinions, judgments, and emotions) during each session and over time. Our findings show significant interactions between time and embodiment for both outcome measures: participant engagement and intimacy increased over time in the physical robot condition, while both measures decreased in the chatbot condition.
- Mina Kian (4 papers)
- Mingyu Zong (5 papers)
- Katrin Fischer (4 papers)
- Anna-Maria Velentza (7 papers)
- Abhyuday Singh (2 papers)
- Kaleen Shrestha (3 papers)
- Pau Sang (2 papers)
- Shriya Upadhyay (2 papers)
- Wallace Browning (2 papers)
- Misha Arif Faruki (1 paper)
- Sébastien M. R. Arnold (21 papers)
- Bhaskar Krishnamachari (107 papers)
- Maja Matarić (35 papers)