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Deep copycat Networks for Text-to-Text Generation

机译:文本到文本生成的深度模板网络

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Most text-to-text generation tasks, for example text summarisation and text simplification, require copying words from the input to the output. We introduce copycat, a transformer-based pointer network for such tasks which obtains competitive results in abstractive text summarisation and generates more abstractive summaries. We propose a further extension of this architecture for automatic post-editing, where generation is conditioned over two inputs (source language and machine translation), and the model is capable of deciding where to copy information from. This approach achieves competitive performance when compared to state-of-the-art automated post-editing systems. More importantly, we show that it addresses a well-known limitation of automatic post-editing - overcorrecting translations - and that our novel mechanism for copying source language words improves the results.
机译:大多数文本到文本生成任务,例如文本汇总和文本简化,请从输入到输出中复制单词。我们介绍了CopyCAT,一种基于变换器的指针网络,用于这种任务,在抽象文本总结中获得竞争结果并产生更具抽象摘要。我们提出了对自动编辑的此架构的进一步扩展,其中生成在两个输入(源语言和机器翻译)上,并且该模型能够决定从中复制信息的位置。与最先进的自动编辑后系统相比,这种方法可以实现竞争性能。更重要的是,我们表明它解决了自动编辑后粗略翻译的众所周知的限制 - 以及我们复制源语言词语的新机制改善了结果。

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