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Enriching Argumentative Texts with Implicit Knowledge

机译:内隐知识丰富议论文

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摘要

Retrieving information that is implicit in a text is difficult. For argument analysis, revealing implied knowledge could be useful to judge how solid an argument is and to construct concise arguments. We design a process for obtaining high-quality implied knowledge annotations for German argumentative microtexts, in the form of simple natural language statements. This process involves several steps to promote agreement and monitors its evolution using textual similarity computation. To further characterize the implied knowledge, we annotate the added sentences with semantic clause types and common sense knowledge relations. To test whether the knowledge could be retrieved automatically, we compare the inserted sentences to Wikipedia articles on similar topics. Analysis of the added knowledge shows that (i) it is characterized by a high proportion of generic sentences, (ii) a majority of it can be mapped to common sense knowledge relations, and (iii) it is similar to sentences found in Wikipedia.
机译:检索隐含在文本中的信息很困难。对于论点分析,揭示隐含知识可能有助于判断论点的扎实程度和构造简洁的论点。我们设计了一种以简单自然语言陈述的形式获取德语议论性微文本的高质量隐含知识注释的过程。此过程涉及几个步骤,以促进协议并使用文本相似性计算来监视其演变。为了进一步表征隐含知识,我们用语义从句类型和常识知识关系对添加的句子进行注释。为了测试是否可以自动检索该知识,我们将插入的句子与有关类似主题的Wikipedia文章进行比较。对增加的知识的分析表明,(i)它的特征是高比例的普通句子;(ii)其中大部分可以映射到常识知识关系,并且(iii)与Wikipedia中的句子相似。

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