Intermediate-Task Training on Multilingual NLI Datasets for Zero-Shot Low-Resource Accuracy in XTREME-R
Description
Intermediate-task training---fine-tuning a pretrained model on an intermediate task before fine-tuning again on the target task---often improves model performance substantially on language understanding tasks in monolingual English settings. We investigate whether English intermediate-task training is still helpful on non-English target tasks. Using nine intermediate language-understanding tasks, we evaluate intermediate-task transfer in a zero-shot cross-lingual setting on the XTREME benchmark. We see large improvements from intermediate training on the BUCC and Tatoeba sentence retrieval tasks a
Research goal: How does intermediate-task training on multilingual NLI datasets impact zero-shot accuracy on low-resource languages in the XTREME-R benchmark compared to monolingual English intermediate tasks?
Autonomous synthesis report generated by Assignee Research. Tribunal consensus score: 9.3/10.
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