MT6: Multilingual Pretrained Text-to-text Transformer With Translation Pairs · Awesome LLM Papers Contribute to LLM-Bible

MT6: Multilingual Pretrained Text-to-text Transformer With Translation Pairs

Zewen Chi et al.. Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing 2021 – 26 citations

[Paper]    
Model Architecture GPT Transformer Pre-Training Training Techniques Evaluation

Multilingual T5 (mT5) pretrains a sequence-to-sequence model on massive monolingual texts, which has shown promising results on many cross-lingual tasks. In this paper, we improve multilingual text-to-text transfer Transformer with translation pairs (mT6). Specifically, we explore three cross-lingual text-to-text pre-training tasks, namely, machine translation, translation pair span corruption, and translation span corruption. In addition, we propose a partially non-autoregressive objective for text-to-text pre-training. We evaluate the methods on eight multilingual benchmark datasets, including sentence classification, named entity recognition, question answering, and abstractive summarization. Experimental results show that the proposed mT6 improves cross-lingual transferability over mT5.

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