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Extreme Adaptation for Personalized Neural Machine Translation

机译:个性化神经机器翻译的极端适应

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摘要

Every person speaks or writes their own flavor of their native language, influenced by a number of factors: the content they tend to talk about, their gender, their social status, or their geographical origin. When attempting to perform Machine Translation (MT), these variations have a significant effect on how the system should perform translation, but this is not captured well by standard one-size-fits-all models. In this paper, we propose a simple and parameter-efficient adaptation technique that only requires adapting the bias of the output softmax to each particular user of the MT system, either directly or through a factored approximation. Experiments on TED talks in three languages demonstrate improvements in translation accuracy, and better reflection of speaker traits in the target text.
机译:每个人都会说或写自己的母语,这受到许多因素的影响:他们倾向于谈论的内容,性别,社会地位或地理位置。尝试执行机器翻译(MT)时,这些变化会对系统执行翻译的方式产生重大影响,但是标准的“一刀切”的所有模型都无法很好地捕捉到这一点。在本文中,我们提出了一种简单且参数有效的自适应技术,该技术仅要求直接或通过因子近似将输出softmax的偏置调整为适合MT系统的每个特定用户。三种语言的TED演讲实验表明,翻译准确性得到了提高,并且目标文本中的说话人特征得到了更好的体现。

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