Place holder for HOPE: a human-centric and task-oriented MT evaluation framework using professional post-editing

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HOPE: A Task-Oriented and Human-Centric Evaluation Framework Using Professional Post-Editing Towards More Effective MT Evaluation

Place holder for data sharing for translation evaluation framework HOPE: a human-centric and task-oriented MT evaluation framework using professional post-editing

File instruction: "Test22-scoring-10-9-2021.xlsm": the 111 segments of English-to-Russian MT using GoogleMT and another System, including data of human offered reference translations, scoring sheeting using HOPE evaluation framework. Open-source for non-profit research. For comercial usage, please contact: @copyright Logrus Global <serge.gladkoff [at] logrusglobal.com> https://logrusglobal.com

Owner
Lifeng Han
natural language processing, machine translation, evaluation models, Mathematical modeling, athlete, writer.
Lifeng Han
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