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Rule-based Morphological Inflection Improves Neural Terminology Translation ...
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Rule-based Morphological Inflection Improves Neural Terminology Translation ...
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Evaluating the Evaluation Metrics for Style Transfer: A Case Study in Multilingual Formality Transfer ...
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Beyond Noise: Mitigating the Impact of Fine-grained Semantic Divergences on Neural Machine Translation ...
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The UMD Submission to the Explainable MT Quality Estimation Shared Task: Combining Explanation Models with Sequence Labeling ...
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Evaluating the Evaluation Metrics for Style Transfer: A Case Study in Multilingual Formality Transfer ...
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How Does Distilled Data Complexity Impact the Quality and Confidence of Non-Autoregressive Machine Translation? ...
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EDITOR: an Edit-Based Transformer with Repositioning for Neural Machine Translation with Soft Lexical Constraints ...
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A Non-Autoregressive Edit-Based Approach to Controllable Text Simplification ...
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Detecting Fine-Grained Cross-Lingual Semantic Divergences without Supervision by Learning to Rank ...
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Incorporating Terminology Constraints in Automatic Post-Editing ...
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Abstract:
Users of machine translation (MT) may want to ensure the use of specific lexical terminologies. While there exist techniques for incorporating terminology constraints during inference for MT, current APE approaches cannot ensure that they will appear in the final translation. In this paper, we present both autoregressive and non-autoregressive models for lexically constrained APE, demonstrating that our approach enables preservation of 95% of the terminologies and also improves translation quality on English-German benchmarks. Even when applied to lexically constrained MT output, our approach is able to improve preservation of the terminologies. However, we show that our models do not learn to copy constraints systematically and suggest a simple data augmentation technique that leads to improved performance and robustness. ... : To appear in WMT, 2020 ...
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Keyword:
Computation and Language cs.CL; FOS Computer and information sciences
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URL: https://arxiv.org/abs/2010.09608 https://dx.doi.org/10.48550/arxiv.2010.09608
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EDITOR: an Edit-Based Transformer with Repositioning for Neural Machine Translation with Soft Lexical Constraints ...
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Controlling Neural Machine Translation Formality with Synthetic Supervision ...
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Controlling Text Complexity in Neural Machine Translation ...
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Formality Style Transfer Within and Across Languages with Limited Supervision
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Identifying Semantic Divergences in Parallel Text without Annotations ...
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Bi-Directional Neural Machine Translation with Synthetic Parallel Data ...
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Multi-Task Neural Models for Translating Between Styles Within and Across Languages ...
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