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Main Authors: Deng, Iskar, Xu, Nathalia, Steinert-Threlkeld, Shane
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.17653
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author Deng, Iskar
Xu, Nathalia
Steinert-Threlkeld, Shane
author_facet Deng, Iskar
Xu, Nathalia
Steinert-Threlkeld, Shane
contents Recent work has shown that language models (LMs) trained on synthetic corpora can exhibit typological preferences that resemble cross-linguistic regularities in human languages, particularly for syntactic phenomena such as word order. In this paper, we extend this paradigm to differential argument marking (DAM), a semantic licensing system in which morphological marking depends on semantic prominence. Using a controlled synthetic learning method, we train GPT-2 models on 18 corpora implementing distinct DAM systems and evaluate their generalization using minimal pairs. Our results reveal a dissociation between two typological dimensions of DAM. Models reliably exhibit human-like preferences for natural markedness direction, favoring systems in which overt marking targets semantically atypical arguments. In contrast, models do not reproduce the strong object preference in human languages, in which overt marking in DAM more often targets objects rather than subjects. These findings suggest that different typological tendencies may arise from distinct underlying sources.
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Differences in Typological Alignment in Language Models' Treatment of Differential Argument Marking
Deng, Iskar
Xu, Nathalia
Steinert-Threlkeld, Shane
Computation and Language
Recent work has shown that language models (LMs) trained on synthetic corpora can exhibit typological preferences that resemble cross-linguistic regularities in human languages, particularly for syntactic phenomena such as word order. In this paper, we extend this paradigm to differential argument marking (DAM), a semantic licensing system in which morphological marking depends on semantic prominence. Using a controlled synthetic learning method, we train GPT-2 models on 18 corpora implementing distinct DAM systems and evaluate their generalization using minimal pairs. Our results reveal a dissociation between two typological dimensions of DAM. Models reliably exhibit human-like preferences for natural markedness direction, favoring systems in which overt marking targets semantically atypical arguments. In contrast, models do not reproduce the strong object preference in human languages, in which overt marking in DAM more often targets objects rather than subjects. These findings suggest that different typological tendencies may arise from distinct underlying sources.
title Differences in Typological Alignment in Language Models' Treatment of Differential Argument Marking
topic Computation and Language
url https://arxiv.org/abs/2602.17653