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Improving Low-Resource Languages in Pre-Trained Multilingual Language Models

Viktor Hangya, Hossain Shaikh Saadi, Alexander Fraser

202218 citationsDOIOpen Access PDF

Abstract

Pre-trained multilingual language models are the foundation of many NLP approaches, including cross-lingual transfer solutions. However, languages with small available monolingual corpora are often not well-supported by these models leading to poor performance. We propose an unsupervised approach to improve the cross-lingual representations of low-resource languages by bootstrapping word translation pairs from monolingual corpora and using them to improve language alignment in pre-trained language models. We perform experiments on nine languages, using contextual word retrieval and zero-shot named entity recognition to measure both intrinsic cross-lingual word representation quality and downstream task performance, showing improvements on both tasks. Our results show that it is possible to improve pre-trained multilingual language models by relying only on non-parallel resources.

Topics & Concepts

Computer scienceBootstrapping (finance)Natural language processingArtificial intelligenceMachine translationWord (group theory)Task (project management)Language modelQuality (philosophy)Transfer of learningLinguisticsManagementEpistemologyEconomicsFinancial economicsPhilosophyNatural Language Processing TechniquesTopic ModelingText Readability and Simplification
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