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Automated Verbal-Pattern Extraction from Political News Articles using CAMEO Event Coding Ontology

机译:使用Comeo Event编码本体从政治新闻文章中自动化的口头模式提取

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Structured metadata extraction from raw-text in different domains is gaining strong attention from the research communities and offering good applicable scenarios. In Political Science, these metadata play a significant role in studying and predicting intra-and inter-state relationships and often follows a certain structural representation. Our work exploits CAMEO (Conflict and Mediation Event Observations) ontology to extract events from political news articles. This event will be represented by metadata such as who-did-what-to-whom format. We face a number of challenges in this extraction process due to the incompleteness of CAMEO dictionaries. In particular, for some verb patterns appeared in articles we may not find a appropriate match in CAMEO verb dictionary (i.e "what"). Our goal is to recommend new verb patterns by mining a large number of news articles to enhance the existing CAMEO verb dictionaries. For this, first we apply Association Rule Mining to find frequent verb patterns. Next, to assign categories of these verb patterns, we develop a novel algorithm based on Word-to-Vec model. Finally, we develop a prototype system for automatically recommending a number of useful verb patterns.
机译:来自不同领域的原始文本的结构化元数据正在获得研究社区的强烈关注,并提供良好的适用情景。在政治学中,这些元数据在研究和预测和状态间关系中起着重要作用,并且通常遵循某种结构表示。我们的工作利用Careo(冲突和调解事件观察)本体从政治新闻文章中提取事件。此活动将由元数据表示,例如谁 - DID-of-of-ob的格式。由于具有“灵感”字典的不完整,我们面临了这种提取过程中的一些挑战。特别是,对于某些动词模式出现在文章中,我们可能无法在Comeob动词字典中找到合适的匹配(即“什么”)。我们的目标是通过挖掘大量新闻文章来推荐新的动词模式来增强现有的灵感动词词典。为此,首先应用关联规则挖掘以找到频繁的动词模式。接下来,要分配这些动词模式的类别,我们开发了一种基于Word-to-Vec模型的新颖算法。最后,我们开发了一个原型系统,用于自动推荐许多有用的动词模式。

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