Augmenting Neural Machine Translation through Round-Trip Training Approach

Author:

Ahmadnia Benyamin1,Dorr Bonnie J.2

Affiliation:

1. Department of Computer Science, Tulane University, New Orleans, LA 70118, United States of America

2. Institute for Human and Machine Cognition (IHMC), Ocala, FL 34471, United States of America

Abstract

AbstractThe quality of Neural Machine Translation (NMT), as a data-driven approach, massively depends on quantity, quality and relevance of the training dataset. Such approaches have achieved promising results for bilingually high-resource scenarios but are inadequate for low-resource conditions. Generally, the NMT systems learn from millions of words from bilingual training dataset. However, human labeling process is very costly and time consuming. In this paper, we describe a round-trip training approach to bilingual low-resource NMT that takes advantage of monolingual datasets to address training data bottleneck, thus augmenting translation quality. We conduct detailed experiments on English-Spanish as a high-resource language pair as well as Persian-Spanish as a low-resource language pair. Experimental results show that this competitive approach outperforms the baseline systems and improves translation quality.

Publisher

Walter de Gruyter GmbH

Subject

General Computer Science

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