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A Stochastic Decoder for Neural Machine Translation*

机译:用于神经机器翻译的随机解码器*

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The process of translation is ambiguous, in that there are typically many valid translations for a given sentence. This gives rise to significant variation in parallel corpora, however, most current models of machine translation do not account for this variation, instead treating the problem as a deterministic process. To this end, we present a deep generative model of machine translation which incorporates a chain of latent variables, in order to account for local lexical and syntactic variation in parallel corpora. We provide an in-depth analysis of the pitfalls encountered in variational inference for training deep generative models. Experiments on several different language pairs demonstrate that the model consistently improves over strong baselines.
机译:翻译的过程是模棱两可的,因为给定句子通常有许多有效的翻译。这会引起并行语料库的显着变化,但是,大多数当前的机器翻译模型都没有考虑这种变化,而是将问题视为确定性过程。为此,我们提出了一种机器翻译的深层生成模型,该模型结合了一系列潜在变量,以解决并行语料库中的局部词法和句法变化。我们为训练深度生成模型提供了变分推理中遇到的陷阱的深入分析。在几种不同的语言对上进行的实验表明,该模型在强大的基线上持续改进。

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