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Statistical Acquisition of Content Selection Rules for Natural Language Generation

机译:用于自然语言生成的内容选择规则的统计获取

摘要

A Natural Language Generation system produces text using as input semantic data. One of its very first tasks is to decide which pieces of information to convey in the output. This task, called Content Selection, is quite domain dependent, requiring considerable re-engineering to transport the system from one scenario to another. In (Duboue and McKeown, 2003), we presented a method to acquire content selection rules automatically from a corpus of text and associated semantics. Our proposed technique was evaluated by comparing its output with information selected by human authors in unseen texts, where we were able to filter half the input data set without loss of recall. This report contains additional technical information about our system.
机译:自然语言生成系统使用输入的语义数据生成文本。它的首要任务之一是决定在输出中传达哪些信息。这项称为“内容选择”的任务在很大程度上取决于领域,需要进行大量的重新设计才能将系统从一种情况迁移到另一种情况。在(Duboue和McKeown,2003年)中,我们提出了一种从文本语料库和相关语义自动获取内容选择规则的方法。通过比较所提出的技术的输出与人类作者在看不见的文本中选择的信息,对我们提出的技术进行了评估,从而能够过滤掉一半的输入数据集,而不会降低召回率。该报告包含有关我们系统的其他技术信息。

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  • 年度 2003
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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