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Breaking the Curse of Multilinguality with Cross-lingual Expert Language Models

Cross-lingual Expert Language Models (X-ELM) improve multilingual performance by independently training language models on subsets of the corpus, mitigating parameter competition and offering benefits like iterative additivity and asynchronous training.

Year
2024
Venue
arXiv 2024
Authors
7
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arxiv.org/abs/2401.10440v2ARXIV-DEFAULT
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Abstract

Despite their popularity in non-English NLP, multilingual language models often underperform monolingual ones due to inter-language competition for model parameters. We propose Cross-lingual Expert Language Models (X-ELM), which mitigate this competition by independently training language models on subsets of the multilingual corpus. This process specializes X-ELMs to different languages while remaining effective as a multilingual ensemble. Our experiments show that when given the same compute budget, X-ELM outperforms jointly trained multilingual models across all considered languages and that these gains transfer to downstream tasks. X-ELM provides additional benefits over performance improvements: new experts can be iteratively added, adapting X-ELM to new languages without catastrophic forgetting. Furthermore, training is asynchronous, reducing the hardware requirements for multilingual training and democratizing multilingual modeling.

Authors

7