Journal of Natural Language Processing
Online ISSN : 2185-8314
Print ISSN : 1340-7619
ISSN-L : 1340-7619
Paper
Improving Pivot Translation by Remembering the Pivot
Akiva MiuraGraham NeubigSakriani SaktiTomoki TodaSatoshi Nakamura
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JOURNAL FREE ACCESS

2016 Volume 23 Issue 5 Pages 499-528

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Abstract

In statistical machine translation, the pivot translation approach allows for translation of language pairs with little or no parallel data by introducing a third language for which data exists. In particular, the triangulation method, which translates by combining source-pivot and pivot-target translation models into a source-target model is known for its high translation accuracy. However, in the conventional triangulation method, information of pivot phrases is forgotten, and not used in the translation process. In this research, we propose a novel approach to remember the pivot phrases in the triangulation stage, and use a pivot language model as an additional information source at translation phase. Experimental results on the united nations parallel corpus showed significant improvements in all tested combinations of languages.

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© 2016 The Association for Natural Language Processing
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