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ARTU / TU Wien and Artificial Researcher@ LongSumm 20

机译:Artu / Tu谁和人工中继@ longsum name 20

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In this paper, we present our approach to solve the LongSumm 2020 Shared Task, at the 1st Workshop on Scholarly Document Processing. The objective of the long summaries task is to generate long summaries that cover salient information in scientific articles. The task is to generate abstractive and extractive summaries of a given scientific article. In the proposed approach, we are inspired by the concept of Argumentative Zoning (AZ) that defines the main rhetorical structure in scientilic articles. We define two aspects that should be covered in scientific paper summary, namely Claim/Method and Conclusion/Result aspects. We use Solr index to expand the sentences of the paper abstract. We formulate each abstract sentence in a given publication as query to retrieve similar sentences from the text body of the document itself. We utilize a sentence selection algorithm described in previous literature to select sentences for the final summary that covers the two aforementioned aspects.
机译:在本文中,我们介绍了解决Longsumm 2020共享任务的方法,在第一个研讨会上进行学术文档处理。长期摘要的目标是在科学文章中涵盖突出的信息的长摘要。任务是生成给定科学文章的抽象和提取摘要。在拟议的方法中,我们受到争论分区(AZ)的概念的启发,该概念定义了科学文章中的主要修辞结构。我们定义了在科学论文摘要中涵盖的两个方面,即索赔/方法和结论/结果方面。我们使用solr指数来扩展纸张摘要的句子。我们在给定的发布中为查询制定每个抽象句,以从文档本身的文本正文中检索类似的句子。我们利用先前文献中描述的句子选择算法来选择涵盖两个上述方面的最终摘要的句子。

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