Bayesian Elicitation with LLMs: Model Size Helps, Extra "Reasoning" Doesn't Always
Proceedings of MIPRO 2026 — 49th ICT and Electronics Convention
Abstract
Large language models (LLMs) have been proposed as alternatives to human experts for estimating unknown quantities with associated uncertainty, a process known as Bayesian elicitation. We test this by asking eleven LLMs to estimate population statistics, such as health prevalence rates, personality trait distributions, and labor market figures, and to express their uncertainty as 95% credible intervals. We vary each model's reasoning effort (low, medium, high) to test whether more "thinking" improves results. Our findings reveal three key results. First, larger, more capable models produce more accurate estimates, but increasing reasoning effort provides no consistent benefit. Second, all models are severely overconfident: their 95% intervals contain the true value only 9–44% of the time, far below the expected 95%. Third, a statistical recalibration technique called conformal prediction can correct this overconfidence, expanding the intervals to achieve the intended coverage. In a preliminary experiment, giving models web search access degraded predictions for already-accurate models, while modestly improving predictions for weaker ones. Models performed well on commonly discussed topics but struggled with specialized health data. These results indicate that LLM uncertainty estimates require statistical correction before they can be used in decision-making.
Notes
Accepted at MIPRO 2026; preprint on arXiv:2604.01896. An empirical study of Bayesian elicitation with eleven LLMs — larger models calibrate better, extra “reasoning” effort does not, and all models are badly overconfident until conformal-prediction recalibration corrects their intervals.
How to cite
@inproceedings{brcic2026brcic,
author = {Luka Hobor and Mario Brcic and Mihael Kovac and Kristijan Poje},
title = {Bayesian Elicitation with LLMs: Model Size Helps, Extra "Reasoning" Doesn't Always},
booktitle = {Proceedings of MIPRO 2026 — 49th ICT and Electronics Convention},
year = {2026},
} Topics: