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Extracting highlights of scientific articles: A supervised summarization approach

机译:提取科学论文的亮点:监督摘要方法

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Scientific articles can be annotated with short sentences, called highlights, providing readers with an at-a-glance overview of the main findings. Highlights are usually manually specified by the authors. This paper presents a supervised approach, based on regression techniques, with the twofold aim at automatically extracting highlights of past articles with missing annotations and simplifying the process of manually annotating new articles. To this end, regression models are trained on a variety of features extracted from previously annotated articles. The proposed approach extends existing extractive approaches by predicting a similarity score, based on n-gram co-occurrences, between article sentences and highlights. The experimental results, achieved on a benchmark collection of articles ranging over heterogeneous topics, show that the proposed regression models perform better than existing methods, both supervised and not. (c) 2020 Elsevier Ltd. All rights reserved.
机译:科学文章可以用短句子注释,称为亮点,为读者提供了一个概述的主要结果。突出显示通常由作者手动指定。本文提出了一种基于回归技术的监督方法,双重宗旨是自动提取过去缺失注释的过去文章的亮点,并简化手动注释新文章的过程。为此,回归模型在从先前注释的文章中提取的各种功能培训。该方法通过在文章句子和亮点之间预测相似性分数来扩展现有的提取方法。实验结果,在非均相主题的基准集合上实现了基准集合,表明所提出的回归模型比现有方法更好,都是监督的。 (c)2020 elestvier有限公司保留所有权利。

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