作为有意义事件的频繁项集在图表中用于总结生物医学文本

M. Moradi
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引用次数: 12

摘要

本文介绍了一种利用图形建模进行生物医学文献摘要的方法。我们解决了识别输入文档中有意义的主题、对句子之间的关系进行建模以及选择最相关的句子的挑战。我们的摘要器利用项集挖掘方法从从输入文档中提取的概念中发现主题。它使用有意义的度量来识别有意义的事件,即输入文档的基本主题。这些有意义的主题被用来构建一个小世界网络来模拟文本中句子之间的关系。那些被识别为信息量高且相关的句子被选择来生成最终的摘要。通过一系列的评估,我们评估了基于图的生物医学文献摘要方法的效率。评估表明,在一些广泛使用的指标方面,与许多可用的方法相比,我们的方法可以获得更好的性能。与其他方法生成的摘要相比,基于图的摘要器生成的摘要包含更多的信息内容。这表明将概念项集挖掘、意义度量和文本小世界网络建模相结合可以很好地应用于生物医学文本摘要中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frequent Itemsets as Meaningful Events in Graphs for Summarizing Biomedical Texts
In this paper, we introduce a method using graph modeling for summarizing biomedical texts. We address the challenges of identifying meaningful topics of the input document, modeling the relations between the sentences, and selecting the most relevant sentences. Our summarizer utilizes an itemset mining method to discover the topics from the concepts extracted from the input document. It uses a meaningfulness measure to identify the meaningful events, i.e. the essential topics of the input document. Theses meaningful topics are used to construct a small-world network that models the relations between the sentences within the text. Those sentences identified as highly-informative and relevant are selected to generate the final summary. Conducting a set of evaluations, we assess the efficiency of the graph-based approach for summarization of biomedical documents. The evaluations demonstrate that our method can achieve a better performance in comparison with a number of available methods with respect to some widely-used metrics. The summaries produced by the graph-based summarizer contain more informative content compared to the summaries generated by the other methods. This shows that the combination of itemset mining on the concepts, the meaningfulness measure, and modeling the text as a small-world network can perform well in biomedical text summarization.
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