Can neural machine translation do simultaneous translation?
About
We investigate the potential of attention-based neural machine translation in simultaneous translation. We introduce a novel decoding algorithm, called simultaneous greedy decoding, that allows an existing neural machine translation model to begin translating before a full source sentence is received. This approach is unique from previous works on simultaneous translation in that segmentation and translation are done jointly to maximize the translation quality and that translating each segment is strongly conditioned on all the previous segments. This paper presents a first step toward building a full simultaneous translation system based on neural machine translation.
Kyunghyun Cho, Masha Esipova• 2016
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Latency Metric Evaluation | IWSLT tst-COMMON (w/o degenerate simultaneous policy) 2022 2023 | -- | 2 | |
| Latency Metric Evaluation | IWSLT En-De tst-COMMON w/o degenerate 2022/2023 | -- | 2 | |
| Latency Metric Accuracy Evaluation | Long-form SimulST All language pairs | -- | 1 | |
| Latency Metric Evaluation | IWSLT tst-COMMON All system pairs 2022 2023 (All) | -- | 1 | |
| Latency Metric Evaluation | IWSLT tst-COMMON En-Zh w/o degenerate 2022 2023 | -- | 1 | |
| Latency Metric Evaluation | IWSLT tst-COMMON 2022/2023 (Same Team w/o degenerate) | -- | 1 |
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