Contextual Neural Model for Translating Bilingual Multi-Speaker Conversations
About
Recent works in neural machine translation have begun to explore document translation. However, translating online multi-speaker conversations is still an open problem. In this work, we propose the task of translating Bilingual Multi-Speaker Conversations, and explore neural architectures which exploit both source and target-side conversation histories for this task. To initiate an evaluation for this task, we introduce datasets extracted from Europarl v7 and OpenSubtitles2016. Our experiments on four language-pairs confirm the significance of leveraging conversation history, both in terms of BLEU and manual evaluation.
Sameen Maruf, Andr\'e F. T. Martins, Gholamreza Haffari• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Machine Translation | BMELD (En=>Ch) (test) | BLEU26.72 | 28 | |
| Machine Translation | BConTrasT De=>En (test) | BLEU59.63 | 28 | |
| Machine Translation | BMELD Ch=>En (test) | BLEU21.09 | 28 | |
| Machine Translation | En -> De (test) | BLEU Score58.68 | 23 | |
| En-De Chat Translation | BConTrasT (test) | BLEU58.68 | 16 | |
| Dialogue Coherence | De-En Base (test) | 1st Precision0.6553 | 7 | |
| Human Evaluation of Machine Translation | Ch⇒En Base (test) | Preference Score0.525 | 6 |
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