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
One For All & All For One: Bypassing Hyperparameter Tuning with Model Averaging For Cross-Lingual Transfer
Fabian David Schmidt, Ivan Vulić, Goran Glavaš
Investigating Bias in Multilingual Language Models: Cross-Lingual Transfer of Debiasing Techniques
Manon Reusens, Philipp Borchert, Margot Mieskes, Jochen De Weerdt, Bart Baesens