Morphemes Without Borders: Evaluating Root-Pattern Morphology in Arabic Tokenizers and LLMs

arXiv cs.CL / 3/18/2026

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Key Points

  • The study investigates how LLMs and tokenizers handle Arabic root-pattern morphology, examining whether models capture genuine morphological structure or rely on surface memorization.
  • It evaluates morphological fidelity across seven Arabic-centric and multilingual LLMs against gold-standard segmentation.
  • It introduces a new test set to assess productive root-pattern generation and finds that tokenizer morphology alignment is neither necessary nor sufficient for morphological generation.
  • The findings challenge the role of morphological tokenization in downstream model performance and have implications for tokenizer design and evaluation in morphologically rich languages.

Abstract

This work investigates how effectively large language models (LLMs) and their tokenization schemes represent and generate Arabic root-pattern morphology, probing whether they capture genuine morphological structure or rely on surface memorization. Arabic morphological system provides a rich testbed for analyzing how LLMs handle complex, non-concatenative forms and how tokenization choices influence this process. Our study begins with an evaluation of morphological fidelity across Arabic and multilingual tokenizers against gold-standard segmentation, followed by an analysis of LLM performance in productive root-pattern generation using a newly developed test set. Our findings across seven Arabic-centric and multilingual LLMs and their respective tokenizers reveal that tokenizer morphological alignment is not necessary nor sufficient for morphological generation, which questions the role of morphological tokenization in downstream performance.