Byte-level simulations show subword tokenization improves LLM training mainly via increased throughput and boundary priors.
The importance of morphology-aware subword tokeniza- tion for NLP tasks in Slovak language modeling
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Decoupling the Benefits of Subword Tokenization for Language Model Training via Byte-level Simulation
Byte-level simulations show subword tokenization improves LLM training mainly via increased throughput and boundary priors.