Multilingual Large Language Models And Curse Of Multilinguality · The Large Language Model Bible Contribute to LLM-Bible

Multilingual Large Language Models And Curse Of Multilinguality

Gurgurov Daniil, Bäumel Tanja, Anikina Tatiana. Arxiv 2024

[Paper]    
BERT GPT Model Architecture Reinforcement Learning Tokenization Training Techniques

Multilingual Large Language Models (LLMs) have gained large popularity among Natural Language Processing (NLP) researchers and practitioners. These models, trained on huge datasets, show proficiency across various languages and demonstrate effectiveness in numerous downstream tasks. This paper navigates the landscape of multilingual LLMs, providing an introductory overview of their technical aspects. It explains underlying architectures, objective functions, pre-training data sources, and tokenization methods. This work explores the unique features of different model types: encoder-only (mBERT, XLM-R), decoder-only (XGLM, PALM, BLOOM, GPT-3), and encoder-decoder models (mT5, mBART). Additionally, it addresses one of the significant limitations of multilingual LLMs - the curse of multilinguality - and discusses current attempts to overcome it.

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