Tatyana Badeka


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2024

pdf bib
Fine-Tuned Machine Translation Metrics Struggle in Unseen Domains
Vilém Zouhar | Shuoyang Ding | Anna Currey | Tatyana Badeka | Jenyuan Wang | Brian Thompson
Proceedings of the 62nd Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers)

We introduce a new, extensive multidimensional quality metrics (MQM) annotated dataset covering 11 language pairs in the biomedical domain. We use this dataset to investigate whether machine translation (MT) metrics which are fine-tuned on human-generated MT quality judgements are robust to domain shifts between training and inference. We find that fine-tuned metrics exhibit a substantial performance drop in the unseen domain scenario relative to both metrics that rely on the surface form and pre-trained metrics that are not fine-tuned on MT quality judgments.