SOTAVerified

The University of Helsinki Submissions to the WMT19 Similar Language Translation Task

2019-08-01WS 2019Unverified0· sign in to hype

Yves Scherrer, Ra{\'u}l V{\'a}zquez, Sami Virpioja

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

This paper describes the University of Helsinki Language Technology group's participation in the WMT 2019 similar language translation task. We trained neural machine translation models for the language pairs Czech - Polish and Spanish - Portuguese. Our experiments focused on different subword segmentation methods, and in particular on the comparison of a cognate-aware segmentation method, Cognate Morfessor, with character segmentation and unsupervised segmentation methods for which the data from different languages were simply concatenated. We did not observe major benefits from cognate-aware segmentation methods, but further research may be needed to explore larger parts of the parameter space. Character-level models proved to be competitive for translation between Spanish and Portuguese, but they are slower in training and decoding.

Tasks

Reproductions