Human-AI Collaboration in Thematic Analysis using ChatGPT: A User Study and Design Recommendations (2311.03999v1)
Abstract: Generative artificial intelligence (GenAI) offers promising potential for advancing human-AI collaboration in qualitative research. However, existing works focused on conventional machine-learning and pattern-based AI systems, and little is known about how researchers interact with GenAI in qualitative research. This work delves into researchers' perceptions of their collaboration with GenAI, specifically ChatGPT. Through a user study involving ten qualitative researchers, we found ChatGPT to be a valuable collaborator for thematic analysis, enhancing coding efficiency, aiding initial data exploration, offering granular quantitative insights, and assisting comprehension for non-native speakers and non-experts. Yet, concerns about its trustworthiness and accuracy, reliability and consistency, limited contextual understanding, and broader acceptance within the research community persist. We contribute five actionable design recommendations to foster effective human-AI collaboration. These include incorporating transparent explanatory mechanisms, enhancing interface and integration capabilities, prioritising contextual understanding and customisation, embedding human-AI feedback loops and iterative functionality, and strengthening trust through validation mechanisms.
- Lixiang Yan (16 papers)
- Vanessa Echeverria (10 papers)
- Gloria Fernandez Nieto (1 paper)
- Yueqiao Jin (9 papers)
- Zachari Swiecki (6 papers)
- Linxuan Zhao (10 papers)
- Dragan Gašević (32 papers)
- Roberto Martinez-Maldonado (14 papers)