English

Metacognitive Sensitivity for Test-Time Dynamic Model Selection

Machine Learning 2025-12-12 v1

Abstract

A key aspect of human cognition is metacognition - the ability to assess one's own knowledge and judgment reliability. While deep learning models can express confidence in their predictions, they often suffer from poor calibration, a cognitive bias where expressed confidence does not reflect true competence. Do models truly know what they know? Drawing from human cognitive science, we propose a new framework for evaluating and leveraging AI metacognition. We introduce meta-d', a psychologically-grounded measure of metacognitive sensitivity, to characterise how reliably a model's confidence predicts its own accuracy. We then use this dynamic sensitivity score as context for a bandit-based arbiter that performs test-time model selection, learning which of several expert models to trust for a given task. Our experiments across multiple datasets and deep learning model combinations (including CNNs and VLMs) demonstrate that this metacognitive approach improves joint-inference accuracy over constituent models. This work provides a novel behavioural account of AI models, recasting ensemble selection as a problem of evaluating both short-term signals (confidence prediction scores) and medium-term traits (metacognitive sensitivity).

Keywords

Cite

@article{arxiv.2512.10451,
  title  = {Metacognitive Sensitivity for Test-Time Dynamic Model Selection},
  author = {Le Tuan Minh Trinh and Le Minh Vu Pham and Thi Minh Anh Pham and An Duc Nguyen},
  journal= {arXiv preprint arXiv:2512.10451},
  year   = {2025}
}

Comments

Accepted at the NeurIPS 2025 CogInterp Workshop

R2 v1 2026-07-01T08:20:14.117Z