DS1 spectrogram: From Passive Metric to Active Signal: The Evolving Role of Uncertainty Quantification in Large Language Models

From Passive Metric to Active Signal: The Evolving Role of Uncertainty Quantification in Large Language Models

January 22, 20262601.15690

Authors

Bradley Malin,Caiming Xiong,Chien-Sheng Wu,Jiaxin Zhang,Wendi Cui

Abstract

While Large Language Models (LLMs) show remarkable capabilities, their unreliability remains a critical barrier to deployment in high-stakes domains. This survey charts a functional evolution in addressing this challenge: the evolution of uncertainty from a passive diagnostic metric to an active control signal guiding real-time model behavior.

We demonstrate how uncertainty is leveraged as an active control signal across three frontiers: in advanced reasoning to optimize computation and trigger self-correction; in autonomous agents to govern metacognitive decisions about tool use and information seeking; and in reinforcement learning to mitigate reward hacking and enable self-improvement via intrinsic rewards. By grounding these advancements in emerging theoretical frameworks like Bayesian methods and Conformal Prediction, we provide a unified perspective on this transformative trend.

This survey provides a comprehensive overview, critical analysis, and practical design patterns, arguing that mastering the new trend of uncertainty is essential for building the next generation of scalable, reliable, and trustworthy AI.

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