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Automatic Event and Relation Detection with Seeds of Varying Complexity

机译:自动事件和关系检测与不同复杂性的种子

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In this paper, we present an approach for automatically detecting events in natural language texts by learning patterns that signal the mentioning of such events We construe the relevant event types as relations and start with a set of seeds consisting of representative event instances that happen to be known and also to be mentioned frequently in easily available training data. Methods have been developed for the automatic identification of event extents and event triggers. We have learned patterns for a particular domain, i.e., prize award events. Currently we are systematically investigating the criteria for selecting the most effective patterns for the detection of events in sentences and paragraphs. Although the systematic investigation is still under way, we can already report on first very promising results of the method for learning of patterns and for using these patterns in event detection.
机译:在本文中,我们提出了一种通过学习模式来自动检测自然语言文本中的事件的方法,该方法发出了提及这些事件,我们将相关的事件类型解释为关系并从一组种子组成的种子,该种子由恰好是恰好的代表性事件已知并且也经常在易于使用的培训数据中提及。已经开发了用于自动识别事件范围和事件触发的方法。我们已经学习了特定领域的模式,即获奖活动。目前我们正在系统地调查选择最有效模式的标准,以检测句子和段落中的事件。虽然系统调查仍在进行中,但我们已经可以报告第一个非常有前途的方法,用于学习模式的方法和在事件检测中使用这些模式。

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