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IITP-AI-NLP-ML@ CL-SciSumm 2020, CL-LaySumm 2020, LongSumm 2020

机译:IITP-AI-NLP-ML @ CL-SCISUMM 2020,CL-LAYSUMM 2020,LONGSUMM 2020

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摘要

The publication rate of scientific literature increases rapidly, which poses a challenge for researchers to keep themselves updated with new state-of-the-art. Scientific document summarization solves this problem by summarizing the essential fact and findings of the document. In the current paper, we present the participation of IITP-AI-NLP-ML team in three shared tasks, namely, CL-SciSumm 2020, LaySumm 2020, LongSumm 2020, which aims to generate medium, lay, and long summaries of the scientific articles, respectively. To solve CL-SciSumm 2020 and LongSumm 2020 tasks, three well-known clustering techniques are used, and then various sentence scoring functions, including textual entailment, are used to extract the sentences from each cluster for a summary generation. For LaySumm 2020, an encoder-decoder based deep learning model has been utilized. Performances of our developed systems are evaluated in terms of ROUGE measures on the associated datasets with the shared task.
机译:科学文献的出版率迅速增加,这对研究人员构成了挑战,使自己更新以新的最先进。科学文件总结通过总结文件的基本事实和调查结果来解决这个问题。在目前的论文中,我们展示了IITP-AI-NLP-ML团队在三个共享任务中的参与,即CL-SCISUMM 2020,Laysumm 2020,Longsumm 2020,旨在产生媒介,铺设和长期的科学摘要文章分别。为了解决CL-SCISUMM 2020和LONGSUMM 2020任务,使用了三种众所周知的群集技术,然后使用各种句子评分功能(包括文本鉴定)来用于从每个群集中提取摘要生成的句子。对于Laysumm 2020,已经利用了基于编码器的解码器的深度学习模型。通过共享任务的相关数据集的胭脂测量值,对我们开发系统的表演进行评估。

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