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Generating Templates of Entity Summaries with an Entity-Aspect Model and Pattern Mining

机译:具有实体方面模型和模式挖掘的实体摘要模板的生成

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摘要

In this paper, we propose a novel approach to automatic generation of summary templates from given collections of summary articles. This kind of summary templates can be useful in various applications. We first develop an entity-aspect LDA model to simultaneously cluster both sentences and words into aspects. We then apply frequent subtree pattern mining on the dependency parse trees of the clustered and labeled sentences to discover sentence patterns that well represent the aspects. Key features of our method include automatic grouping of semantically related sentence patterns and automatic identification of template slots that need to be filled in. We apply our method on five Wikipedia entity categories and compare our method with two baseline methods. Both quantitative evaluation based on human judgment and qualitative comparison demonstrate the effectiveness and advantages of our method.
机译:在本文中,我们提出了一种新颖的方法,可以从给定的摘要文章集合中自动生成摘要模板。这种摘要模板可在各种应用程序中使用。我们首先开发一个实体方面的LDA模型,以将句子和单词同时聚类为方面。然后,我们将频繁的子树模式挖掘应用于经过聚类和标记的句子的依存关系分析树上,以发现能很好地表示方面的句子模式。该方法的主要功能包括自动对语义相关的句子模式进行分组以及自动识别需要填写的模板位置。我们将我们的方法应用于五个Wikipedia实体类别,并将我们的方法与两个基线方法进行比较。基于人的判断的定量评估和定性比较都证明了我们方法的有效性和优势。

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