AI RESEARCH

Language Model Fine-Tuning on Scaled Survey Data for Predicting Distributions of Public Opinions

arXiv CS.CL

ArXi:2502.16761v2 Announce Type: replace Large language models (LLMs) present novel opportunities in public opinion research by predicting survey responses in advance during the early stages of survey design. Prior methods steer LLMs via descriptions of subpopulations as LLMs' input prompt, yet such prompt engineering approaches have struggled to faithfully predict the distribution of survey responses from human subjects. In this work, we propose directly fine-tuning LLMs to predict response distributions by leveraging unique structural characteristics of survey data.