Can Neural Machine Translation be Improved with User Feedback?
Kreutzer, Julia, Khadivi, Shahram, Matusov, Evgeny, Riezler, Stefan
We present the first real-world application of methods for improving neural machine translation (NMT) with human reinforcement, based on explicit and implicit user feedback collected on the eBay e-commerce platform. Previous work has been confined to simulation experiments, whereas in this paper we work with real logged feedback for offline bandit learning of NMT parameters. We conduct a thorough analysis of the available explicit user judgments---five-star ratings of translation quality---and show that they are not reliable enough to yield significant improvements in bandit learning. In contrast, we successfully utilize implicit task-based feedback collected in a cross-lingual search task to improve task-specific and machine translation quality metrics.
Apr-16-2018
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- North America > United States
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- Research Report
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- Information Technology > Services (0.70)
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