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A Hybrid Approach for Improved Low Resource Neural Machine Translation using Monolingual Data (2011.07403v3)

Published 14 Nov 2020 in cs.CL and cs.LG

Abstract: Many language pairs are low resource, meaning the amount and/or quality of available parallel data is not sufficient to train a neural machine translation (NMT) model which can reach an acceptable standard of accuracy. Many works have explored using the readily available monolingual data in either or both of the languages to improve the standard of translation models in low, and even high, resource languages. One of the most successful of such works is the back-translation that utilizes the translations of the target language monolingual data to increase the amount of the training data. The quality of the backward model which is trained on the available parallel data has been shown to determine the performance of the back-translation approach. Despite this, only the forward model is improved on the monolingual target data in standard back-translation. A previous study proposed an iterative back-translation approach for improving both models over several iterations. But unlike in the traditional back-translation, it relied on both the target and source monolingual data. This work, therefore, proposes a novel approach that enables both the backward and forward models to benefit from the monolingual target data through a hybrid of self-learning and back-translation respectively. Experimental results have shown the superiority of the proposed approach over the traditional back-translation method on English-German low resource neural machine translation. We also proposed an iterative self-learning approach that outperforms the iterative back-translation while also relying only on the monolingual target data and require the training of less models.

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Authors (5)
  1. Idris Abdulmumin (39 papers)
  2. Bashir Shehu Galadanci (7 papers)
  3. Abubakar Isa (4 papers)
  4. Habeebah Adamu Kakudi (2 papers)
  5. Ismaila Idris Sinan (1 paper)
Citations (6)