arXiv Open Access 2025

Linguistic Interpretability of Transformer-based Language Models: a systematic review

Miguel López-Otal Jorge Gracia Jordi Bernad Carlos Bobed Lucía Pitarch-Ballesteros +1 lainnya
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Abstrak

Language models based on the Transformer architecture achieve excellent results in many language-related tasks, such as text classification or sentiment analysis. However, despite the architecture of these models being well-defined, little is known about how their internal computations help them achieve their results. This renders these models, as of today, a type of 'black box' systems. There is, however, a line of research -- 'interpretability' -- aiming to learn how information is encoded inside these models. More specifically, there is work dedicated to studying whether Transformer-based models possess knowledge of linguistic phenomena similar to human speakers -- an area we call 'linguistic interpretability' of these models. In this survey we present a comprehensive analysis of 160 research works, spread across multiple languages and models -- including multilingual ones -- that attempt to discover linguistic information from the perspective of several traditional Linguistics disciplines: Syntax, Morphology, Lexico-Semantics and Discourse. Our survey fills a gap in the existing interpretability literature, which either not focus on linguistic knowledge in these models or present some limitations -- e.g. only studying English-based models. Our survey also focuses on Pre-trained Language Models not further specialized for a downstream task, with an emphasis on works that use interpretability techniques that explore models' internal representations.

Topik & Kata Kunci

Penulis (6)

M

Miguel López-Otal

J

Jorge Gracia

J

Jordi Bernad

C

Carlos Bobed

L

Lucía Pitarch-Ballesteros

E

Emma Anglés-Herrero

Format Sitasi

López-Otal, M., Gracia, J., Bernad, J., Bobed, C., Pitarch-Ballesteros, L., Anglés-Herrero, E. (2025). Linguistic Interpretability of Transformer-based Language Models: a systematic review. https://arxiv.org/abs/2504.08001

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2025
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en
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arXiv
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