N-gram-like Language Models Predict Reading Time Best
Computation and Language
2026-03-11 v1
Abstract
Recent work has found that contemporary language models such as transformers can become so good at next-word prediction that the probabilities they calculate become worse for predicting reading time. In this paper, we propose that this can be explained by reading time being sensitive to simple n-gram statistics rather than the more complex statistics learned by state-of-the-art transformer language models. We demonstrate that the neural language models whose predictions are most correlated with n-gram probability are also those that calculate probabilities that are the most correlated with eye-tracking-based metrics of reading time on naturalistic text.
Cite
@article{arxiv.2603.09872,
title = {N-gram-like Language Models Predict Reading Time Best},
author = {James A. Michaelov and Roger P. Levy},
journal= {arXiv preprint arXiv:2603.09872},
year = {2026}
}