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Word Position Aware Translation Memory for Neural Machine Translation

机译:用于神经机器翻译的单词位置感知翻译记忆库

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The approach based on translation pieces is appealing for neural machine translation with a translation memory (TM), owing to its efficiency in both computation and memory consumption. Unfortunately, it is incapable of capturing sufficient contextual translation leading to a limited translation performance. This paper thereby proposes a simple yet effective approach to address this issue. Its key idea is to employ the word position information from a TM as additional rewards to guide the decoding of neural machine translation (NMT). Experiments on seven tasks show that the proposed approach yields consistent gains particularly for those source sentences whose TM is very similar to themselves, while maintaining similar efficiency to the counterpart of translation pieces.
机译:基于翻译片段的方法因其在计算和内存消耗方面的效率而吸引了具有翻译记忆库(TM)的神经机器翻译。不幸的是,它无法捕获足够的上下文翻译,从而导致翻译性能受到限制。因此,本文提出了一种简单而有效的方法来解决此问题。它的关键思想是利用来自TM的单词位置信息作为额外的奖励,以指导神经机器翻译(NMT)的解码。在七个任务上的实验表明,所提出的方法特别是对于那些TM与其自身非常相似的源句子产生了一致的收益,同时保持了与译文相对应的相似效率。

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