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BLEU Meets COMET: Combining Lexical and Neural Metrics Towards Robust Machine Translation Evaluation

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arxiv 2305.19144 v1 pith:5ZCTYJ6W submitted 2023-05-30 cs.CL

BLEU Meets COMET: Combining Lexical and Neural Metrics Towards Robust Machine Translation Evaluation

classification cs.CL
keywords evaluationhumanmetricstranslationbleucombiningcometcorrelations
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Although neural-based machine translation evaluation metrics, such as COMET or BLEURT, have achieved strong correlations with human judgements, they are sometimes unreliable in detecting certain phenomena that can be considered as critical errors, such as deviations in entities and numbers. In contrast, traditional evaluation metrics, such as BLEU or chrF, which measure lexical or character overlap between translation hypotheses and human references, have lower correlations with human judgements but are sensitive to such deviations. In this paper, we investigate several ways of combining the two approaches in order to increase robustness of state-of-the-art evaluation methods to translations with critical errors. We show that by using additional information during training, such as sentence-level features and word-level tags, the trained metrics improve their capability to penalize translations with specific troublesome phenomena, which leads to gains in correlation with human judgments and on recent challenge sets on several language pairs.

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