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Generating basic skills reports for low-skilled readers

机译:为低技能读者生成基本技能报告

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摘要

We describe SkillSum, a Natural Language Generation (NLG) system that generates a personalised feedback report for someone who has just completed a screening assessment of their basic literacy and numeracy skills. Because many SkillSum users have limited literacy, the generated reports must be easily comprehended by people with limited reading skills; this is the most novel aspect of SkillSum, and the focus of this paper. We used two approaches to maximise readability. First, for determining content and structure (document planning), we did not explicitly model readability, but rather followed a pragmatic approach of repeatedly revising content and structure following pilot experiments and interviews with domain experts. Second, for choosing linguistic expressions (microplanning), we attempted to formulate explicitly the choices that enhanced readability, using a constraints approach and preference rules; our constraints were based on corpus analysis and our preference rules were based on psycholinguistic findings. Evaluation of the SkillSum system was twofold: it compared the usefulness of NLG technology to that of canned text output, and it assessed the effectiveness of the readability model. Results showed that NLG was more effective than canned text at enhancing users' knowledge of their skills, and also suggested that the empirical 'revise based on experiments and interviews' approach made a substantial contribution to readability as well as our explicit psycholinguistically inspired models of readability choices.
机译:我们描述了SkillSum,这是一种自然语言生成(NLG)系统,可为刚刚完成其基本读写能力和计算能力筛查评估的人生成个性化反馈报告。由于许多SkillSum用户的读写能力有限,因此阅读能力有限的人必须易于理解所生成的报告。这是SkillSum的最新颖的方面,也是本文的重点。我们使用两种方法来最大化可读性。首先,为了确定内容和结构(文档计划),我们没有明确地对可读性进行建模,而是遵循了务实的方法,即在试点实验和与领域专家的访谈之后反复修改内容和结构。其次,在选择语言表达(微观计划)时,我们尝试使用约束方法和偏好规则来明确地制定出增强可读性的选择。我们的约束基于语料库分析,而我们的偏好规则则基于心理语言学发现。对SkillSum系统的评估是双重的:它比较了NLG技术和固定文本输出的实用性,并评估了可读性模型的有效性。结果表明,NLG在增强用户的技能知识方面比罐头文字更有效,并且表明经验性的“基于实验和访谈的修订”方法对可读性以及我们明确的语言学启发的可读性模型做出了重大贡献选择。

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