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Main Authors: Lotz, Jonas F., Lopes, António V., Peitz, Stephan, Setiawan, Hendra, Emili, Leonardo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.03101
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author Lotz, Jonas F.
Lopes, António V.
Peitz, Stephan
Setiawan, Hendra
Emili, Leonardo
author_facet Lotz, Jonas F.
Lopes, António V.
Peitz, Stephan
Setiawan, Hendra
Emili, Leonardo
contents The choice of tokenizer can profoundly impact language model performance, yet accessible and reliable evaluations of tokenizer quality remain an open challenge. Inspired by scaling consistency, we show that smaller models can accurately predict significant differences in tokenizer impact on larger models at a fraction of the compute cost. By systematically evaluating both English-centric and multilingual tokenizers, we find that tokenizer choice has negligible effects on tasks in English but results in consistent performance differences in multilingual settings. We propose new intrinsic tokenizer metrics inspired by Zipf's law that correlate more strongly with downstream performance than text compression when modeling unseen languages. By combining several metrics to capture multiple aspects of tokenizer behavior, we develop a reliable framework for intrinsic tokenizer evaluations. Our work offers a more efficient path to informed tokenizer selection in future language model development.
format Preprint
id arxiv_https___arxiv_org_abs_2506_03101
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Beyond Text Compression: Evaluating Tokenizers Across Scales
Lotz, Jonas F.
Lopes, António V.
Peitz, Stephan
Setiawan, Hendra
Emili, Leonardo
Computation and Language
The choice of tokenizer can profoundly impact language model performance, yet accessible and reliable evaluations of tokenizer quality remain an open challenge. Inspired by scaling consistency, we show that smaller models can accurately predict significant differences in tokenizer impact on larger models at a fraction of the compute cost. By systematically evaluating both English-centric and multilingual tokenizers, we find that tokenizer choice has negligible effects on tasks in English but results in consistent performance differences in multilingual settings. We propose new intrinsic tokenizer metrics inspired by Zipf's law that correlate more strongly with downstream performance than text compression when modeling unseen languages. By combining several metrics to capture multiple aspects of tokenizer behavior, we develop a reliable framework for intrinsic tokenizer evaluations. Our work offers a more efficient path to informed tokenizer selection in future language model development.
title Beyond Text Compression: Evaluating Tokenizers Across Scales
topic Computation and Language
url https://arxiv.org/abs/2506.03101