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AI Conversational Interviewing: Transforming Surveys With LLMs as Adaptive Interviewers

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Link to Profile Frauke Kreuter PI Matchmaking

Frauke Kreuter

Prof. Dr.

Principal Investigator

Abstract

Traditional methods for eliciting people's opinions face a trade-off between depth and scale: structured surveys enable large-scale data collection but limit respondents' ability to voice their opinions in their own words, while conversational interviews provide deeper insights but are resource-intensive. This study explores the potential of replacing human interviewers with large language models (LLMs) to conduct scalable conversational interviews. Our goal is to assess the performance of AI Conversational Interviewing and to identify opportunities for improvement in a controlled environment. We conducted a small-scale, in-depth study with university students who were randomly assigned to a conversational interview by either AI or human interviewers, both employing identical questionnaires on political topics. Various quantitative and qualitative measures assessed interviewer adherence to guidelines, response quality, participant engagement, and overall interview efficacy. The findings indicate the viability of AI Conversational Interviewing in producing quality data comparable to traditional methods, with the added benefit of scalability. We publish our data and materials for re-use and present specific recommendations for effective implementation.

misc


Preprint

Mar. 2025

Authors

A. Wuttke • M. Aßenmacher • C. Klamm • M. Lang • Q. Würschinger • F. Kreuter

Links

arXiv

Research Areas

 A1 | Statistical Foundations & Explainability

 C4 | Computational Social Sciences

BibTeXKey: WAK+25a

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