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mLongT5: A Multilingual and Efficient Text-To-Text Transformer for Longer Sequences

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arxiv 2305.11129 v2 pith:VYDFV6FN submitted 2023-05-18 cs.CL

mLongT5: A Multilingual and Efficient Text-To-Text Transformer for Longer Sequences

classification cs.CL
keywords multilingualmlongt5efficientmodelpretrainingtaskstext-to-texttransformer
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present our work on developing a multilingual, efficient text-to-text transformer that is suitable for handling long inputs. This model, called mLongT5, builds upon the architecture of LongT5, while leveraging the multilingual datasets used for pretraining mT5 and the pretraining tasks of UL2. We evaluate this model on a variety of multilingual summarization and question-answering tasks, and the results show stronger performance for mLongT5 when compared to existing multilingual models such as mBART or M-BERT.

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