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Using Argumentative Zones for Extractive Summarization of Scientific Articles

机译:使用议论文区域对科学论文进行摘要

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摘要

Information structure, i.e the way speakers construct sentences to present new information in the context of old, can capture rich linguistic information about the discourse structure of scientific documents. Information structure has been found useful for important Natural Language Processing (NLP) tasks, such as information retrieval and extraction. Since scientific articles typically follow a certain discourse structure describing the prior work, problem being solved, methods used, and so forth, it could also be useful for summarization of these articles. In this work we focus on a scheme of information structure called Argumentative Zoning (AZ), and investigate whether its categories could support extractive text summarization in a scientific domain. We develop a summarization system that uses AZ categories (ⅰ) as features and (ⅱ) in the final sentence selection process. We evaluate the system directly as well as using task-based evaluation. The results show that AZ can support both full document and customized summarization. We report a statistically significant improvement in summarization performance against a competitive baseline that uses journal section labels instead of AZ information.
机译:信息结构,即说话者构造句子以在旧环境中呈现新信息的方式,可以捕获有关科学文献话语结构的丰富语言信息。已经发现信息结构对于重要的自然语言处理(NLP)任务(例如信息检索和提取)很有用。由于科学文章通常遵循描述先前工作,要解决的问题,使用的方法等的特定论述结构,因此对于这些文章的摘要也可能很有用。在这项工作中,我们重点研究一种称为“议事区划(AZ)”的信息结构方案,并研究其类别是否可以在科学领域支持提取性文本摘要。我们开发了一个摘要系统,该系统使用AZ类别(ⅰ)作为特征,而在最终句子选择过程中使用(ⅱ)。我们直接评估系统,也使用基于任务的评估。结果表明AZ可以支持完整文档和自定义摘要。我们报告了摘要性能相对于使用期刊栏目标签而不是可用区信息的竞争性基线的统计显着改善。

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