Title :
A novel method to optimize training data for translation model adaptation
Author :
Hao Liu; Yu Hong; Liang Yao; Le Liu; Jianmin Yao; Qiaoming Zhu
Author_Institution :
School of Computer Science and Technology, Soochow University, SuZhou, China
Abstract :
In this paper, we explore the method to improve the cross-domain adaptation of current translation models, with the aim to solve the common problem that ambiguous linguistic knowledge in different domain causes a difficult training for a robust translation model. Specially, we propose a novel method to automatically optimize training data for translation model adaptation. The method combines a test sentence and its best candidate translation to generate a pseudo-parallel translation pair. Regarding the pairs as queries, the method follows a twin-track retrieval approach to further mine parallel sentence pairs from large-scale bilingual resources. Experiments show that by using our method, the optimized translation models significantly improve the translation performance by 1.8 BLEU points when only 7.7% of bilingual training data is used.
Keywords :
"Computational modeling","Training","Lenses","Pragmatics","Adaptation models"
Conference_Titel :
Asian Language Processing (IALP), 2015 International Conference on
Print_ISBN :
978-1-4673-9595-3
DOI :
10.1109/IALP.2015.7451517