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Hierarchical Graph Summarization: Leveraging Hybrid Information through Visible and Invisible Linkage

机译:层次图摘要:通过可见和不可见链接利用混合信息

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摘要

Graph-based ranking algorithm has been recently exploited for summarization by using sentence-to-sentence relationships. Given a document set with linkage information to summarize, different sentences belong to different documents or clusters (either visible cluster via anchor texts or invisible cluster by semantics), which enables a hierarchical structure. It is challenging and interesting to investigate the impacts and weights of source documents/clusters: sentence from important ones are deemed more salient than the others. This paper aims to integrate three types of hierarchical linkage into traditional graph-based methods by proposing Hierarchical Graph Summarization (HGS). We utilize a hierarchical language model to measure the sentence relationships in HGS. We develop experimental systems to compare 5 rival algorithms on 4 instinctively different datasets which amount to 5197 documents. Performance comparisons between different system-generated summaries and manually created ones by human editors demonstrate the effectiveness of our approach in ROUGE metrics.
机译:最近,基于图的排序算法已被利用来利用句子与句子之间的关系进行概括。给定具有链接信息以进行汇总的文档集,不同的句子属于不同的文档或聚类(通过锚定文本显示的可见聚类或通过语​​义显示的不可见聚类),从而实现了层次结构。调查源文档/群集的影响和权重是具有挑战性和有趣的:重要文档中的句子被认为比其他文档更突出。本文旨在通过提出“层次图摘要”(HGS),将三种类型的层次结构链接集成到传统的基于图的方法中。我们利用分层语言模型来衡量HGS中的句子关系。我们开发了实验系统,以比较本能不同的4个数据集(共5197个文档)中的5种竞争算法。在不同的系统生成的摘要和人工编辑的手动创建的摘要之间的性能比较,证明了我们的方法在ROUGE指标中的有效性。

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