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A Similarity-Based Abstract Argumentation Approach to Extractive Text Summarization

机译:一种基于相似性的抽象论证方法来提取文本摘要

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Sentence-based extractive summarization aims at automatically generating shorter versions of texts by extracting from them the minimal set of sentences that are necessary and sufficient to cover their content. Providing effective solutions to this task would allow the users to save time in selecting the most appropriate documents to read for satisfying their information needs or for supporting their decision-making tasks. This paper proposes 2 contributions: (i) it defines a novel approach, based on abstract argumentation, to select the sentences in a text that are to be included in the summary; (ii) it proposes a new strategy for similarity assessment among sentences, adopting a different similarity measure than those traditionally exploited in the literature. The effectiveness of the proposed approach was confirmed by experimental results obtained on the English subset of the benchmark MultiLing2015 dataset.
机译:基于句子的提取摘要旨在通过从它们中提取来自动生成短版本的文本,这是必要的最小句子集是必要的并且足以覆盖其内容的句子。为此任务提供有效的解决方案将允许用户节省时间选择最合适的文档以读取以满足其信息需求或支持其决策任务。本文提出了2个贡献:(i)它定义了一种基于抽象论证的新方法,以选择要包含在摘要中的文本中的句子; (ii)提出了一种新的判决中相似性评估的新策略,采用不同的相似度测量,而不是传统上在文献中剥削的措施。通过基准MultiLing2015数据集的英语子集获得的实验结果证实了所提出的方法的有效性。

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