Harnessing the Power of AI in Qualitative Research: Role Assignment, Engagement, and User Perceptions of AI-Generated Follow-Up Questions in Semi-Structured Interviews
By: He Zhang , Yueyan Liu , Xin Guan and more
Potential Business Impact:
AI helps interviewers ask better questions.
Semi-structured interviews highly rely on the quality of follow-up questions, yet interviewers' knowledge and skills may limit their depth and potentially affect outcomes. While many studies have shown the usefulness of large language models (LLMs) for qualitative analysis, their possibility in the data collection process remains underexplored. We adopt an AI-driven "Wizard-of-Oz" setup to investigate how real-time LLM support in generating follow-up questions shapes semi-structured interviews. Through a study with 17 participants, we examine the value of LLM-generated follow-up questions, the evolving division of roles, relationships, collaborative behaviors, and responsibilities between interviewers and AI. Our findings (1) provide empirical evidence of the strengths and limitations of AI-generated follow-up questions (AGQs); (2) introduce a Human-AI collaboration framework in this interview context; and (3) propose human-centered design guidelines for AI-assisted interviewing. We position LLMs as complements, not replacements, to human judgment, and highlight pathways for integrating AI into qualitative data collection.
Similar Papers
Interview AI-ssistant: Designing for Real-Time Human-AI Collaboration in Interview Preparation and Execution
Human-Computer Interaction
Helps people ask better questions in interviews.
From Assistance to Autonomy -- A Researcher Study on the Potential of AI Support for Qualitative Data Analysis
Computers and Society
Helps researchers use AI for analyzing words.
AI-Assisted Conversational Interviewing: Effects on Data Quality and User Experience
Human-Computer Interaction
AI chatbots get better answers from people.