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Supervised Text Style Transfer Using Neural Machine Translation: Converting between Old and Modern Turkish as an Example

机译:使用神经机翻译监督文本方式转移:旧与现代土耳其语转换为例

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Languages evolve and change over time. Accordingly, texts that were written a hundred years ago may become incomprehensible, such as hundred-year-old Turkish texts. Additionally, making old written work accessible to today's generation requires qualified writers, who are responsible for the process of conversion. Unfortunately, that is costly in both time and resources. To work out this problem, we develop an automatic style conversion system. We formulate our problem as a machine translation problem and use the recently popularized Neural Machine Translation techniques. Furthermore, we introduce a data-driven approach to align source and target word vectors. Although we do not introduce new model components over the standard RNN encoder-decoder, the way we utilize monolingual data to pre-train our word vectors lead to significant improvements. Despite the simplicity of our approach, we outperform complex approaches. We achieve a BLEU score of 33.8 points, improving our baseline by 12 points.
机译:语言随着时间的推移而发展和变化。因此,一百年前书面编写的文本可能会受到难以理解的,例如百岁的土耳其文本。此外,对今天的一代人提供的旧书面工作需要有合格的作家,他们负责转换过程。不幸的是,这两次和资源都是昂贵的。要解决此问题,我们开发了一种自动化的转换系统。我们将我们的问题作为机器翻译问题,并使用最近推广的神经电机翻译技术。此外,我们引入了一种数据驱动方法来对齐源和目标字矢量。虽然我们在标准RNN编码器解码器上没有引入新的模型组件,但我们利用单晶体数据以预先培训我们的单词向量的方式导致了显着的改进。尽管我们的方法很简单,但我们擅长复杂的方法。我们达到了33.8分的Bleu得分,将基线改善12分。

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