探索同步关键字和关键句子提取:使用维基百科改进基于图的排名

Xun Wang, Lei Wang, Jiwei Li, Sujian Li
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引用次数: 10

摘要

摘要和关键词选择是自然语言处理领域的两项重要工作。虽然两者的目的都是总结源文章,但它们通常是用句子或单词分开对待的。在本文中,我们提出了一种基于两级图的排序算法来同时生成摘要和提取关键词。以往的工作已经达成共识,重要的句子是由重要的关键词组成的。本文通过语境分析,进一步研究二者之间的相互影响。我们利用维基百科构建了一个基于概念的两层图,而不是传统的基于术语的图,来表达它们的同质关系和异质关系。我们在图上运行PageRank和HITS排名来调整同质和异构关系。对于关键句的选择和关键字的选择,会得到一个更合理的关联度值。我们在TAC 2011数据集上评估了我们的算法。传统的基于术语的方法在ROUGE-1中的得分为0.255,在ROUGE-2中的得分为0.037,而我们的方法可以将它们分别提高到0.323和0.048。
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Exploring simultaneous keyword and key sentence extraction: improve graph-based ranking using wikipedia
Summarization and Keyword Selection are two important tasks in NLP community. Although both aim to summarize the source articles, they are usually treated separately by using sentences or words. In this paper, we propose a two-level graph based ranking algorithm to generate summarization and extract keywords at the same time. Previous works have reached a consensus that important sentence is composed by important keywords. In this paper, we further study the mutual impact between them through context analysis. We use Wikipedia to build a two-level concept-based graph, instead of traditional term-based graph, to express their homogenous relationship and heterogeneous relationship. We run PageRank and HITS rank on the graph to adjust both homogenous and heterogeneous relationships. A more reasonable relatedness value will be got for key sentence selection and keyword selection. We evaluate our algorithm on TAC 2011 data set. Traditional term-based approach achieves a score of 0.255 in ROUGE-1 and a score of 0.037 and ROUGE-2 and our approach can improve them to 0.323 and 0.048 separately.
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