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Bringing Structure into Summaries: a Faceted Summarization Dataset for Long Scientific Documents

机译:将结构带入摘要:长期科学文档的面位摘要数据集

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摘要

Faceted summarization provides briefings of a document from different perspectives. Readers can quickly comprehend the main points of a long document with the help of a structured outline. However, little research has been conducted on this subject, partially due to the lack of large-scale faceted summarization datasets. In this study, we present Facet Sum, a faceted summarization benchmark built on Emerald journal articles, covering a diverse range of domains. Different from traditional document-summary pairs, Facet Sum provides multiple summaries, each targeted at specific sections of a long document, including the purpose, method, findings, and value. Analyses and empirical results on our dataset reveal the importance of bringing structure into summaries. We believe FacetSum will spur further advances in summarization research and foster the development of NLP systems that can leverage the structured information in both long texts and summaries.
机译:刻面摘要提供了来自不同观点的文件的简报。 读者可以在结构性轮廓的帮助下快速理解长文件的主要观点。 然而,由于缺乏大规模的摘要数据集,部分研究了很少的研究。 在这项研究中,我们呈现Facet Sum,这是一个面对祖母绿期刊文章的刻面摘要基准,涵盖了各种各样的域。 与传统文档摘要对不同,Facet Sum提供多个摘要,每个摘要每个都针对长文档的特定部分,包括目的,方法,发现和价值。 我们数据集的分析和经验结果揭示了将结构带入摘要的重要性。 我们认为Facetsum将促进摘要研究进一步进展,促进了NLP系统的发展,可以利用长篇文章和摘要中的结构化信息。

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