SparkMe: Adaptive Semi-Structured Interviewing for Qualitative Insight Discovery
David Anugraha, Vishakh Padmakumar, Diyi Yang

TL;DR
SparkMe is an adaptive LLM-based interviewing system that optimizes question selection to maximize topic coverage and emergent insight discovery while minimizing interview length, outperforming prior approaches.
Contribution
We introduce SparkMe, a novel multi-agent LLM interviewer that formulates adaptive interviewing as an optimization problem and uses deliberative planning for improved qualitative data collection.
Findings
Achieves 4.7% higher topic coverage than baselines
Elicits richer emergent insights with fewer turns
Produces high-quality, profession-specific interviews
Abstract
Qualitative insights from user experiences are critical for informing product and policy decisions, but collecting such data at scale is constrained by the time and availability of experts to conduct semi-structured interviews. Recent work has explored using large language models (LLMs) to automate interviewing, yet existing systems lack a principled mechanism for balancing systematic coverage of predefined topics with adaptive exploration, or the ability to pursue follow-ups, deep dives, and emergent themes that arise organically during conversation. In this work, we formulate adaptive semi-structured interviewing as an optimization problem over the interviewer's behavior. We define interview utility as a trade-off between coverage of a predefined interview topic guide, discovery of relevant emergent themes, and interview cost measured by length. Based on this formulation, we introduce…
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Taxonomy
TopicsExpert finding and Q&A systems · Computational and Text Analysis Methods · Mobile Crowdsensing and Crowdsourcing
