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Subword Segmentation in LLMs: Looking at Inflection and Consistency

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Alexander Fraser

Prof. Dr.

Principal Investigator

Abstract

The role of subword segmentation in relation to capturing morphological patterns in LLMs is currently not well explored. Ideally, one would train models like GPT using various segmentations and evaluate how well word meanings are captured. Since this is not computationally feasible, we group words according to their segmentation properties and compare how well a model can solve a linguistic task for these groups. We study two criteria: (i) adherence to morpheme boundaries and (ii) the segmentation consistency of the different inflected forms of a lemma. We select word forms with high and low values for these criteria and carry out experiments on GPT-4o’s ability to capture verbal inflection for 10 languages. Our results indicate that in particular the criterion of segmentation consistency can help to predict the model’s ability to recognize and generate the lemma from an inflected form, providing evidence that subword segmentation is relevant.

inproceedings


EMNLP 2024

Conference on Empirical Methods in Natural Language Processing. Miami, FL, USA, Nov 12-16, 2024.
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A* Conference

Authors

M. Di Marco • A. Fraser

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DOI

Research Area

 B2 | Natural Language Processing

BibTeXKey: MF24

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