Cross Lingual Transfer
Cross-lingual transfer aims to leverage knowledge learned from high-resource languages to improve performance on low-resource languages in natural language processing tasks. Current research focuses on adapting large language models (LLMs) for cross-lingual transfer, employing techniques like model merging, data augmentation (including synthetic data generation and transliteration), and innovative training strategies such as in-context learning and continual pre-training. This research is crucial for expanding the reach of NLP to a wider range of languages, enabling applications like multilingual question answering, sentiment analysis, and code generation to benefit diverse communities globally.
Papers
March 3, 2022
February 25, 2022
February 24, 2022
February 23, 2022
December 27, 2021
December 13, 2021
November 28, 2021
November 12, 2021