Evaluation of causal sentences in automated summaries

C. Puente, Augusto Villa Monte, L. Lanzarini, Alejandro Sobrino, J. A. Olivas
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引用次数: 4

Abstract

This paper presents an experiment to show the importance of causal sentences in summaries. Presumably, causal sentences hold relevant information and thus summaries should contain them. We perform an experiment to refute or validate this hypothesis. We have selected 28 medical documents to extract and analyze causal and conditional sentences from medical texts. Once retrieved, classic metrics are used to determine the relevance of the causal content among all the sentences in the document and, so, to evaluate if they are important enough to make a better summary. Finally, a comparison table to explore the results is showed and some conclusions are outlined.
自动摘要中因果句的评价
本文通过一个实验来证明因果句在摘要中的重要性。据推测,因果句包含相关信息,因此总结应该包含它们。我们做了一个实验来反驳或证实这个假设。我们选择了28篇医学文献,从医学文本中提取和分析因果句和条件句。一旦检索到,经典度量标准将用于确定文档中所有句子之间因果内容的相关性,从而评估它们是否重要到足以做出更好的摘要。最后,通过对比表对研究结果进行了探讨,并得出了一些结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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