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End-to-End Content and Plan Selection for Data-to-Text Generation

机译:数据到文本生成的端到端内容和计划选择

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Learning to generate fluent natural language from structured data with neural networks has become an common approach for NLG. This problem can be challenging when the form of the structured data varies between examples. This paper presents a survey of several extensions to sequence-to-sequence models to account for the latent content selection process, particularly variants of copy attention and coverage decoding. We further propose a training method based on diverse ensembling to encourage models to learn distinct sentence templates during training. An empirical evaluation of these techniques shows an increase in the quality of generated text across five automated metrics, as well as human evaluation.
机译:学习使用神经网络从结构化数据中生成流畅的自然语言已成为NLG的常用方法。当结构化数据的形式在示例之间变化时,此问题可能具有挑战性。本文提出了对序列到序列模型的几种扩展的调查,以说明潜在的内容选择过程,尤其是复制注意和覆盖解码的变体。我们进一步提出了一种基于多种合奏的训练方法,以鼓励模型在训练过程中学习不同的句子模板。对这些技术的经验评估表明,通过五个自动化指标以及人工评估,生成的文本的质量有所提高。

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