@inproceedings{lin-et-al-2023, title = {Low-Resource Cross-Lingual Adaptive Training for Nigerian Pidgin}, author = {Pin-Jie Lin and Muhammed Saeed and Ernie Chang and Merel Scholman}, url = {https://arxiv.org/abs/2307.00382}, year = {2023}, date = {2023}, booktitle = {Proceedings of the 24th INTERSPEECH conference}, abstract = {Developing effective spoken language processing systems for low-resource languages poses several challenges due to the lack of parallel data and limited resources for fine-tuning models. In this work, we target on improving upon both text classification and translation of Nigerian Pidgin (Naija) by collecting a large-scale parallel English-Pidgin corpus and further propose a framework of cross-lingual adaptive training that includes both continual and task adaptive training so as to adapt a base pre-trained model to low-resource languages. Our studies show that English pre-trained language models serve as a stronger prior than multilingual language models on English-Pidgin tasks with up to 2.38 BLEU improvements; and demonstrate that augmenting orthographic data and using task adaptive training with back-translation can have a significant impact on model performance.}, pubstate = {published}, type = {inproceedings} }