Recent advances of low-resource neural machine translation |
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Authors: | Haque Rejwanul Liu Chao-Hong Way Andy |
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Affiliation: | 1.School of Computing, National College of Ireland, Mayor Square, IFSC, Dublin 1, Ireland ;2.ADAPT Centre, School of Computing, Dublin City University, Dublin, Ireland ; |
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Abstract: | In recent years, neural network-based machine translation (MT) approaches have steadily superseded the statistical MT (SMT) methods, and represents the current state-of-the-art in MT research. Neural MT (NMT) is a data-driven end-to-end learning protocol whose training routine usually requires a large amount of parallel data in order to build a reasonable-quality MT system. This is particularly problematic for those language pairs that do not have enough parallel text for training. In order to counter the data sparsity problem of the NMT training, MT researchers have proposed various strategies, e.g. augmenting training data, exploiting training data from other languages, alternative learning strategies that use only monolingual data. This paper presents a survey on recent advances of NMT research from the perspective of low-resource scenarios. |
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