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arxiv 2010.05318 v1 pith:LH6A2MQS submitted 2020-10-11 cs.CL

TransQuest at WMT2020: Sentence-Level Direct Assessment

classification cs.CL
keywords resultsassessmentdirectframeworksentence-levelsharedtasktransquest
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper presents the team TransQuest's participation in Sentence-Level Direct Assessment shared task in WMT 2020. We introduce a simple QE framework based on cross-lingual transformers, and we use it to implement and evaluate two different neural architectures. The proposed methods achieve state-of-the-art results surpassing the results obtained by OpenKiwi, the baseline used in the shared task. We further fine tune the QE framework by performing ensemble and data augmentation. Our approach is the winning solution in all of the language pairs according to the WMT 2020 official results.

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