arXiv Open Access 2025

The challenge of uncertainty quantification of large language models in medicine

Zahra Atf Seyed Amir Ahmad Safavi-Naini Peter R. Lewis Aref Mahjoubfar Nariman Naderi +2 lainnya
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Abstrak

This study investigates uncertainty quantification in large language models (LLMs) for medical applications, emphasizing both technical innovations and philosophical implications. As LLMs become integral to clinical decision-making, accurately communicating uncertainty is crucial for ensuring reliable, safe, and ethical AI-assisted healthcare. Our research frames uncertainty not as a barrier but as an essential part of knowledge that invites a dynamic and reflective approach to AI design. By integrating advanced probabilistic methods such as Bayesian inference, deep ensembles, and Monte Carlo dropout with linguistic analysis that computes predictive and semantic entropy, we propose a comprehensive framework that manages both epistemic and aleatoric uncertainties. The framework incorporates surrogate modeling to address limitations of proprietary APIs, multi-source data integration for better context, and dynamic calibration via continual and meta-learning. Explainability is embedded through uncertainty maps and confidence metrics to support user trust and clinical interpretability. Our approach supports transparent and ethical decision-making aligned with Responsible and Reflective AI principles. Philosophically, we advocate accepting controlled ambiguity instead of striving for absolute predictability, recognizing the inherent provisionality of medical knowledge.

Topik & Kata Kunci

Penulis (7)

Z

Zahra Atf

S

Seyed Amir Ahmad Safavi-Naini

P

Peter R. Lewis

A

Aref Mahjoubfar

N

Nariman Naderi

T

Thomas R. Savage

A

Ali Soroush

Format Sitasi

Atf, Z., Safavi-Naini, S.A.A., Lewis, P.R., Mahjoubfar, A., Naderi, N., Savage, T.R. et al. (2025). The challenge of uncertainty quantification of large language models in medicine. https://arxiv.org/abs/2504.05278

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Informasi Jurnal
Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓