Dual Learning for Machine Translation
Peking University · Microsoft Research Asia (China) · +2 more institutions
Abstract
While neural machine translation (NMT) is making good progress in the past two years, tens of millions of bilingual sentence pairs are needed for its training. However, human labeling is very costly. To tackle this training data bottleneck, we develop a dual-learning mechanism, which can enable an NMT system to automatically learn from unlabeled data through a dual-learning game. This mechanism is inspired by the following observation: any machine translation task has a dual task, e.g., English-to-French translation (primal) versus French-to-English translation (dual); the primal and dual tasks can form a closed loop, and generate informative feedback signals to train the translation models, even if without…
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Authors
7Topics & keywords
- Dual (grammatical number)
- Computer science
- Machine translation
- Translation (biology)
- Artificial intelligence
- Natural language processing
- Linguistics
- Philosophy
- Quality Education