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arxiv:2510.12766

Language Models Model Language

Published on Oct 14
· Submitted by Łukasz Borchmann on Oct 20
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Abstract

The paper advocates for an empiricist approach to evaluating language models, emphasizing frequency of use over traditional theoretical frameworks.

AI-generated summary

Linguistic commentary on LLMs, heavily influenced by the theoretical frameworks of de Saussure and Chomsky, is often speculative and unproductive. Critics challenge whether LLMs can legitimately model language, citing the need for "deep structure" or "grounding" to achieve an idealized linguistic "competence." We argue for a radical shift in perspective towards the empiricist principles of Witold Ma\'nczak, a prominent general and historical linguist. He defines language not as a "system of signs" or a "computational system of the brain" but as the totality of all that is said and written. Above all, he identifies frequency of use of particular language elements as language's primary governing principle. Using his framework, we challenge prior critiques of LLMs and provide a constructive guide for designing, evaluating, and interpreting language models.

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Paper submitter
edited 3 days ago

LLMs are imperfect, not because they fail to model language, but because they only model language.

IMO this is paper title of the year 🔥

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