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Context-Aware Neural Machine Translation Decoding

机译:背景感知神经机翻译解码

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This work presents a decoding architecture that fuses the information from a neural translation model and the context semantics enclosed in a semantic space language model based on word embeddings. The method extends the beam search decoding process and therefore can be applied to any neural machine translation framework. With this, we sidestep two drawbacks of current document-level systems: (ⅰ) we do not modify the training process so there is no increment in training time, and (ⅱ) we do not require document-level annotated data. We analyze the impact of the fusion system approach and its parameters on the final translation quality for English-Spanish. We obtain consistent and statistically significant improvements in terms of BLEU and METEOR and observe how the fused systems are able to handle synonyms to propose more adequate translations as well as help the system to disambiguate among several translation candidates for a word.
机译:这项工作提出了一种解码架构,其融合了神经翻译模型的信息和基于Word Embeddings中的语义空间模型中括起来的上下文语义。该方法扩展了光束搜索解码过程,因此可以应用于任何神经机器翻译框架。有了这个,我们索引了当前文档级系统的两个缺点:(Ⅰ)我们没有修改培训过程,因此培训时间没有增量,(Ⅱ)我们不需要文档级注释数据。我们分析了融合系统方法的影响及其参数对英语西班牙语最终翻译质量的影响。我们在Bleu和流星方面获得了一致的和统计上的显着改进,并观察了融合系统如何处理同义词,以提出更具足够的翻译,以及帮助系统在几个翻译候选人中消除歧义。

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