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What Have We Achieved on Non-autoregressive Translation?

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Recent advances have made non-autoregressive (NAT) translation comparable to autoregressive methods (AT). However, their evaluation using BLEU has been shown to weakly correlate with human annotations. Limited research compares non-autoregressive translation and autoregressive translation comprehensively, leaving uncertainty about the true proximity of NAT to AT. To address this gap, we systematically evaluate four representative NAT methods across various dimensions, including human evaluation. Our empirical results demonstrate that despite narrowing the performance gap, state-of-the-art NAT still underperforms AT under more reliable evaluation metrics. Furthermore, we discover that explicitly modeling dependencies is crucial for generating natural language and generalizing to out-of-distribution sequences.

Yafu Li, Huajian Zhang, Jianhao Yan, Yongjing Yin, Yue Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Machine TranslationWMT En-Ro 2016 (test)
BLEU33.25
39
Machine TranslationWMT De⇒En 2021 (test)
BLEU32.26
12
Machine TranslationWMT De-En 21
MQM Score229.3
5
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