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An Operation Sequence Model for Explainable Neural Machine Translation

机译:可解释的神经机器翻译的操作序列模型

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摘要

We propose to achieve explainable neural machine translation (NMT) by changing the output representation to explain itself. We present a novel approach to NMT which generates the target sentence by monotonically walking through the source sentence. Word reordering is modeled by operations which allow setting markers in the target sentence and move a target-side write head between those markers. In contrast to many modern neural models, our system emits explicit word alignment information which is often crucial to practical machine translation as it improves explain-ability. Our technique can outperform a plain text system in terms of BLEU score under the recent Transformer architecture on Japanese-English and Portuguese-English, and is within 0.5 BLEU difference on Spanish-English.
机译:我们建议通过更改输出表示来解释自身来实现可解释的神经机器翻译(NMT)。我们提出了一种新的NMT方法,该方法通过单调地遍历源语句来生成目标语句。通过允许在目标句子中设置标记并在这些标记之间移动目标侧写头的操作来对单词重新排序进行建模。与许多现代神经模型相比,我们的系统发出明确的单词对齐信息,这对实际机器翻译通常至关重要,因为它提高了解释能力。在最近的Transformer架构上,在日语-英语和葡萄牙语-英语上,我们的技术可以在BLEU评分方面优于纯文本系统,并且在西班牙语-英语之间相差0.5 BLEU。

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