The field of machine translation (MT), the automatic translation of written text from one natural language into another, has experienced a major paradigm shift in recent years. Statistical MT, which mainly relies on various count-based models and which used to dominate MT research for decades, has largely been superseded by neural machine translation (NMT), which tackles translation with a single neural network. In this work we will trace back the origins of modern NMT architectures to word and sentence embeddings and earlier examples of the encoder-decoder network family. We will conclude with a short survey of more recent trends in the field.
CITATION STYLE
Stahlberg, F. (2020). Neural machine translation: A review. Journal of Artificial Intelligence Research. AI Access Foundation. https://doi.org/10.1613/JAIR.1.12007
Mendeley helps you to discover research relevant for your work.