CLLGJan 17, 2020

RobBERT: a Dutch RoBERTa-based Language Model

arXiv:2001.06286v20.001052 citations
AI Analysis15

This work addresses the need for better language models in Dutch NLP, though it is incremental as it adapts an existing method to a new language.

The authors tackled the problem of improving Dutch natural language processing by training RobBERT, a Dutch language model based on RoBERTa, which achieved state-of-the-art results on various tasks, particularly outperforming other models with smaller datasets.

Pre-trained language models have been dominating the field of natural language processing in recent years, and have led to significant performance gains for various complex natural language tasks. One of the most prominent pre-trained language models is BERT, which was released as an English as well as a multilingual version. Although multilingual BERT performs well on many tasks, recent studies show that BERT models trained on a single language significantly outperform the multilingual version. Training a Dutch BERT model thus has a lot of potential for a wide range of Dutch NLP tasks. While previous approaches have used earlier implementations of BERT to train a Dutch version of BERT, we used RoBERTa, a robustly optimized BERT approach, to train a Dutch language model called RobBERT. We measured its performance on various tasks as well as the importance of the fine-tuning dataset size. We also evaluated the importance of language-specific tokenizers and the model's fairness. We found that RobBERT improves state-of-the-art results for various tasks, and especially significantly outperforms other models when dealing with smaller datasets. These results indicate that it is a powerful pre-trained model for a large variety of Dutch language tasks. The pre-trained and fine-tuned models are publicly available to support further downstream Dutch NLP applications.

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