AIMar 31

Measuring the metacognition of AI

arXiv:2603.2969313.11 citations
Predicted impact top 65% in AI · last 90 daysOriginality Synthesis-oriented
AI Analysis

This work addresses the need for robust metacognitive assessment in AI decision-making, which is crucial as AI systems are increasingly integrated into workflows, though it is incremental as it adapts existing psychophysical frameworks to AI.

The paper tackles the problem of measuring AI metacognition by proposing the meta-d' framework and signal detection theory as methods to assess AI's ability to generate confidence ratings and regulate decisions based on uncertainty and risk, demonstrating their utility through experiments on three large language models.

A robust decision-making process must take into account uncertainty, especially when the choice involves inherent risks. Because artificial Intelligence (AI) systems are increasingly integrated into decision-making workflows, managing uncertainty relies more and more on the metacognitive capabilities of these systems; i.e, their ability to assess the reliability of and regulate their own decisions. Hence, it is crucial to employ robust methods to measure the metacognitive abilities of AI. This paper is primarily a methodological contribution arguing for the adoption of the meta-d' framework, or its model-free alternatives, as the gold standard for assessing the metacognitive sensitivity of AIs--the ability to generate confidence ratings that distinguish correct from incorrect responses. Moreover, we propose to leverage signal detection theory (SDT) to measure the ability of AIs to spontaneously regulate their decisions based on uncertainty and risk. To demonstrate the practical utility of these psychophysical frameworks, we conduct two series of experiments on three large language models (LLMs)--GPT-5, DeepSeek-V3.2-Exp, and Mistral-Medium-2508. In the first experiments, LLMs performed a primary judgment followed by a confidence rating. In the second, LLMs only performed the primary judgment, while we manipulated the risk associated with either response. On the one hand, applying the meta-d' framework allows us to conduct comparisons along three axes: comparing an LLM to optimality, comparing different LLMs on a given task, and comparing the same LLM across different tasks. On the other hand, SDT allows us to assess whether LLMs become more conservative when risks are high.

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