QUality Estimation from ScraTCH (QUETCH): Deep Learning for Word-level Translation Quality Estimation
2015pp. 316–322
Citations Over TimeTop 10% of 2015 papers
Abstract
This paper describes the system submitted by the University of Heidelberg to the Shared Task on Word-level Quality Estimation at the 2015 Workshop on Statistical Machine Translation. The submitted system combines a continuous space deep neural network, that learns a bilingual feature representation from scratch, with a linear combination of the manually defined baseline features provided by the task organizers. A combination of these orthogonal information sources shows significant improvements over the combined systems, and produces very competitive F 1 -scores for predicting word-level translation quality.
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