Neural Machine Translation
Neural Machine Translation (NMT) aims to automatically translate text between languages using deep learning models, primarily focusing on improving translation accuracy and fluency. Current research emphasizes enhancing model robustness through techniques like contrastive learning to reduce repetition, leveraging translation memories and large language models (LLMs) for improved accuracy and efficiency, and addressing issues such as data scarcity in low-resource languages via data augmentation and transfer learning. These advancements have significant implications for cross-lingual communication, impacting fields ranging from international commerce to multilingual education and accessibility.
Papers
Neural Machine Translation of Clinical Text: An Empirical Investigation into Multilingual Pre-Trained Language Models and Transfer-Learning
Lifeng Han, Serge Gladkoff, Gleb Erofeev, Irina Sorokina, Betty Galiano, Goran Nenadic
Content-Localization based Neural Machine Translation for Informal Dialectal Arabic: Spanish/French to Levantine/Gulf Arabic
Fatimah Alzamzami, Abdulmotaleb El Saddik