CLMar 26, 2024

Introducing Syllable Tokenization for Low-resource Languages: A Case Study with Swahili

arXiv:2406.15358v14 citationsh-index: 14
Originality Incremental advance
AI Analysis

This work addresses the challenge of applying multilingual NLP to low-resource languages like Swahili, but it is incremental as it extends existing subword tokenization efforts.

The authors tackled the problem of improving pre-trained language models for low-resource languages by proposing a syllable tokenization method, specifically tested on Swahili, and found that it generates effective syllable embeddings for text generation with GPT2.

Many attempts have been made in multilingual NLP to ensure that pre-trained language models, such as mBERT or GPT2 get better and become applicable to low-resource languages. To achieve multilingualism for pre-trained language models (PLMs), we need techniques to create word embeddings that capture the linguistic characteristics of any language. Tokenization is one such technique because it allows for the words to be split based on characters or subwords, creating word embeddings that best represent the structure of the language. Creating such word embeddings is essential to applying PLMs to other languages where the model was not trained, enabling multilingual NLP. However, most PLMs use generic tokenization methods like BPE, wordpiece, or unigram which may not suit specific languages. We hypothesize that tokenization based on syllables within the input text, which we call syllable tokenization, should facilitate the development of syllable-aware language models. The syllable-aware language models make it possible to apply PLMs to languages that are rich in syllables, for instance, Swahili. Previous works introduced subword tokenization. Our work extends such efforts. Notably, we propose a syllable tokenizer and adopt an experiment-centric approach to validate the proposed tokenizer based on the Swahili language. We conducted text-generation experiments with GPT2 to evaluate the effectiveness of the syllable tokenizer. Our results show that the proposed syllable tokenizer generates syllable embeddings that effectively represent the Swahili language.

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