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Hauptverfasser: Tsipidi, Eleftheria, Kiegeland, Samuel, Re, Francesco Ignazio, Xu, Tianyang, Giulianelli, Mario, Stanczak, Karolina, Cotterell, Ryan
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2604.18712
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author Tsipidi, Eleftheria
Kiegeland, Samuel
Re, Francesco Ignazio
Xu, Tianyang
Giulianelli, Mario
Stanczak, Karolina
Cotterell, Ryan
author_facet Tsipidi, Eleftheria
Kiegeland, Samuel
Re, Francesco Ignazio
Xu, Tianyang
Giulianelli, Mario
Stanczak, Karolina
Cotterell, Ryan
contents Probing has shown that language model representations encode rich linguistic information, but it remains unclear whether they also capture cognitive signals about human processing. In this work, we probe language model representations for human reading times. Using regularized linear regression on two eye-tracking corpora spanning five languages (English, Greek, Hebrew, Russian, and Turkish), we compare the representations from every model layer against scalar predictors -- surprisal, information value, and logit-lens surprisal. We find that the representations from early layers outperform surprisal in predicting early-pass measures such as first fixation and gaze duration. The concentration of predictive power in the early layers suggests that human-like processing signatures are captured by low-level structural or lexical representations, pointing to a functional alignment between model depth and the temporal stages of human reading. In contrast, for late-pass measures such as total reading time, scalar surprisal remains superior, despite its being a much more compressed representation. We also observe performance gains when using both surprisal and early-layer representations. Overall, we find that the best-performing predictor varies strongly depending on the language and eye-tracking measure.
format Preprint
id arxiv_https___arxiv_org_abs_2604_18712
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Probing for Reading Times
Tsipidi, Eleftheria
Kiegeland, Samuel
Re, Francesco Ignazio
Xu, Tianyang
Giulianelli, Mario
Stanczak, Karolina
Cotterell, Ryan
Computation and Language
Probing has shown that language model representations encode rich linguistic information, but it remains unclear whether they also capture cognitive signals about human processing. In this work, we probe language model representations for human reading times. Using regularized linear regression on two eye-tracking corpora spanning five languages (English, Greek, Hebrew, Russian, and Turkish), we compare the representations from every model layer against scalar predictors -- surprisal, information value, and logit-lens surprisal. We find that the representations from early layers outperform surprisal in predicting early-pass measures such as first fixation and gaze duration. The concentration of predictive power in the early layers suggests that human-like processing signatures are captured by low-level structural or lexical representations, pointing to a functional alignment between model depth and the temporal stages of human reading. In contrast, for late-pass measures such as total reading time, scalar surprisal remains superior, despite its being a much more compressed representation. We also observe performance gains when using both surprisal and early-layer representations. Overall, we find that the best-performing predictor varies strongly depending on the language and eye-tracking measure.
title Probing for Reading Times
topic Computation and Language
url https://arxiv.org/abs/2604.18712