English

Reasoning aligns language models to human cognition

Machine Learning 2026-02-10 v1

Abstract

Do language models make decisions under uncertainty like humans do, and what role does chain-of-thought (CoT) reasoning play in the underlying decision process? We introduce an active probabilistic reasoning task that cleanly separates sampling (actively acquiring evidence) from inference (integrating evidence toward a decision). Benchmarking humans and a broad set of contemporary large language models against near-optimal reference policies reveals a consistent pattern: extended reasoning is the key determinant of strong performance, driving large gains in inference and producing belief trajectories that become strikingly human-like, while yielding only modest improvements in active sampling. To explain these differences, we fit a mechanistic model that captures systematic deviations from optimal behavior via four interpretable latent variables: memory, strategy, choice bias, and occlusion awareness. This model places humans and models in a shared low-dimensional cognitive space, reproduces behavioral signatures across agents, and shows how chain-of-thought shifts language models toward human-like regimes of evidence accumulation and belief-to-choice mapping, tightening alignment in inference while leaving a persistent gap in information acquisition.

Keywords

Cite

@article{arxiv.2602.08693,
  title  = {Reasoning aligns language models to human cognition},
  author = {Gonçalo Guiomar and Elia Torre and Pehuen Moure and Victoria Shavina and Mario Giulianelli and Shih-Chii Liu and Valerio Mante},
  journal= {arXiv preprint arXiv:2602.08693},
  year   = {2026}
}

Comments

38 pages, 4 main figures, multiple appendix figures

R2 v1 2026-07-01T10:27:58.192Z