DS1 spectrogram: Parity-Aware Byte-Pair Encoding: Improving Cross-lingual Fairness in
  Tokenization

Parity-Aware Byte-Pair Encoding: Improving Cross-lingual Fairness in Tokenization

2508.04796

Authors

Joel Niklaus,Sina Ahmadi,Antoine Bosselut,Rico Sennrich,Negar Foroutan

Abstract

Tokenization is the first -- and often least scrutinized -- step of most NLP pipelines. Standard algorithms for learning tokenizers rely on frequency-based objectives, which favor languages dominant in the training data and consequently leave lower-resource languages with tokenizations that are disproportionately longer, morphologically implausible, or even riddled with <UNK> placeholders.

This phenomenon ultimately amplifies computational and financial inequalities between users from different language backgrounds. To remedy this, we introduce Parity-aware Byte Pair Encoding (BPE), a variant of the widely-used BPE algorithm.

At every merge step, Parity-aware BPE maximizes the compression gain of the currently worst-compressed language, trading a small amount of global compression for cross-lingual parity. We find empirically that Parity-aware BPE leads to more equitable token counts across languages, with negligible impact on global compression rate and no substantial effect on language-model performance in downstream tasks.

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