Adaptive Elicitation of Latent Information Using Natural Language

Published: 05 Mar 2025, Last Modified: 12 Mar 2025QUESTION PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: LLMs, uncertainty quantification, active learning
TL;DR: We propose an adaptive elicitation framework that actively reduces uncertainty on a latent entity using natural language.
Abstract: Eliciting information to reduce uncertainty on a latent entity is a critical skill in many application domains, e.g., assessing individual student learning outcomes, diagnosing underlying diseases, or learning user preferences. Though natural language is a powerful medium for this purpose, large language models (LLMs) and existing fine-tuning algorithms lack mechanisms for strategically gathering information to refine their own understanding of the latent entity. We propose an adaptive elicitation framework that actively reduces uncertainty on the latent entity by simulating counterfactual responses. Since probabilistic modeling of an abstract latent entity is difficult, we validate and finetune LLM-based uncertainty quantification methods using perplexity over masked future observations produced by the latent entity. Our framework enables the development of sophisticated information-gathering strategies, and we demonstrate its versatility through experiments on dynamic opinion polling and adaptive student assessment.
Submission Number: 20
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