Survey of Low-Resource Machine Translation

Author:

Haddow Barry1,Bawden Rachel2,Barone Antonio Valerio Miceli3,Helcl Jindřich4,Birch Alexandra5

Affiliation:

1. University of Edinburgh School of Informatics. bhaddow@inf.ed.ac.uk

2. Inria, France. Rachel.bawden@inria.fr

3. University of Edinburgh School of Informatics. amiceli@ed.ac.uk

4. University of Edinburgh School of Informatics. jhelcl@ed.ac.uk

5. University of Edinburgh School of Informatics .a.birch@ed.ac.uk

Abstract

AbstractWe present a survey covering the state of the art in low-resource machine translation (MT) research. There are currently around 7,000 languages spoken in the world and almost all language pairs lack significant resources for training machine translation models. There has been increasing interest in research addressing the challenge of producing useful translation models when very little translated training data is available. We present a summary of this topical research field and provide a description of the techniques evaluated by researchers in several recent shared tasks in low-resource MT.

Publisher

MIT Press

Subject

Artificial Intelligence,Computer Science Applications,Linguistics and Language,Language and Linguistics

Reference316 articles.

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