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Challenging Language-Dependent Segmentation for Arabic: An Application to Machine Translation and Part-of-Speech Tagging

Authors :
Sajjad, Hassan
Dalvi, Fahim
Durrani, Nadir
Abdelali, Ahmed
Belinkov, Yonatan
Vogel, Stephan
Publication Year :
2017

Abstract

Word segmentation plays a pivotal role in improving any Arabic NLP application. Therefore, a lot of research has been spent in improving its accuracy. Off-the-shelf tools, however, are: i) complicated to use and ii) domain/dialect dependent. We explore three language-independent alternatives to morphological segmentation using: i) data-driven sub-word units, ii) characters as a unit of learning, and iii) word embeddings learned using a character CNN (Convolution Neural Network). On the tasks of Machine Translation and POS tagging, we found these methods to achieve close to, and occasionally surpass state-of-the-art performance. In our analysis, we show that a neural machine translation system is sensitive to the ratio of source and target tokens, and a ratio close to 1 or greater, gives optimal performance.<br />Comment: ACL 2017 pages 7

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1709.00616
Document Type :
Working Paper