English

Tokenization Matters: Navigating Data-Scarce Tokenization for Gender Inclusive Language Technologies

Computation and Language 2024-04-09 v3 Artificial Intelligence Machine Learning

Abstract

Gender-inclusive NLP research has documented the harmful limitations of gender binary-centric large language models (LLM), such as the inability to correctly use gender-diverse English neopronouns (e.g., xe, zir, fae). While data scarcity is a known culprit, the precise mechanisms through which scarcity affects this behavior remain underexplored. We discover LLM misgendering is significantly influenced by Byte-Pair Encoding (BPE) tokenization, the tokenizer powering many popular LLMs. Unlike binary pronouns, BPE overfragments neopronouns, a direct consequence of data scarcity during tokenizer training. This disparate tokenization mirrors tokenizer limitations observed in multilingual and low-resource NLP, unlocking new misgendering mitigation strategies. We propose two techniques: (1) pronoun tokenization parity, a method to enforce consistent tokenization across gendered pronouns, and (2) utilizing pre-existing LLM pronoun knowledge to improve neopronoun proficiency. Our proposed methods outperform finetuning with standard BPE, improving neopronoun accuracy from 14.1% to 58.4%. Our paper is the first to link LLM misgendering to tokenization and deficient neopronoun grammar, indicating that LLMs unable to correctly treat neopronouns as pronouns are more prone to misgender.

Keywords

Cite

@article{arxiv.2312.11779,
  title  = {Tokenization Matters: Navigating Data-Scarce Tokenization for Gender Inclusive Language Technologies},
  author = {Anaelia Ovalle and Ninareh Mehrabi and Palash Goyal and Jwala Dhamala and Kai-Wei Chang and Richard Zemel and Aram Galstyan and Yuval Pinter and Rahul Gupta},
  journal= {arXiv preprint arXiv:2312.11779},
  year   = {2024}
}

Comments

Accepted to NAACL 2024 findings

R2 v1 2026-06-28T13:55:29.964Z