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When and Why is Document-level Context Useful in Neural Machine Translation?

机译:什么以及为什么文档级上下文在神经机翻译中有用?

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Document-level context has received lots of attention for compensating neural machine translation (NMT) of isolated sentences. However, recent advances in document-level NMT focus on sophisticated integration of the context, explaining its improvement with only a few selected examples or targeted test sets. We extensively quantify the causes of improvements by a document-level model in general test sets, clarifying the limit of the usefulness of document-level context in NMT. We show that most of the improvements are not interpretable as utilizing the context. We also show that a minimal encoding is sufficient for the context modeling and very long context is not helpful for NMT.
机译:文档级上下文已收到孤立句子的神经机翻译(NMT)的注意力。然而,文档级NMT的最新进展侧重于上下文的复杂集成,解释其仅具有少数选定示例或目标测试集的改进。我们广泛地量化了一般测试集中文档级模型的改进原因,阐明了NMT中文档级上下文的有用性的限制。我们表明,大多数改进都不会像利用上下文解释。我们还表明,最小的编码足以让上下文建模,并且很长的上下文对NMT没有帮助。

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