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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

TaskDatasetResultRank
Machine TranslationBMELD (En=>Ch) (test)
BLEU26.72
28
Machine TranslationBConTrasT De=>En (test)
BLEU59.63
28
Machine TranslationBMELD Ch=>En (test)
BLEU21.09
28
Machine TranslationEn -> De (test)
BLEU Score58.68
23
En-De Chat TranslationBConTrasT (test)
BLEU58.68
16
Dialogue CoherenceDe-En Base (test)
1st Precision0.6553
7
Human Evaluation of Machine TranslationCh⇒En Base (test)
Preference Score0.525
6
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