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Semantic Noise Matters for Neural Natural Language Generation

机译:神经自然语言生成的语义噪声问题

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Neural natural language generation (NNLG) systems are known for their pathological outputs, i.e. generating text which is unrelated to the input specification. In this paper, we show the impact of semantic noise on state-of-the-art NNLG models which implement different semantic control mechanisms. We find that cleaned data can improve semantic correctness by up to 97%, while maintaining fluency. We also find that the most common error is omitting information, rather than hallucination.
机译:神经自然语言生成(NNLG)系统以其病理输出而著称,即生成与输入规范无关的文本。在本文中,我们展示了语义噪声对实现不同语义控制机制的最新NNLG模型的影响。我们发现,清理后的数据可以在保持流畅度的同时将语义正确性提高多达97%。我们还发现最常见的错误是省略信息,而不是幻觉。

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