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Leveraging Dependency Regularization for Event Extraction

机译:利用依赖性正则化进行事件提取

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Event Extraction (EE) is a challenging Information Extraction task which aims to discover event triggers with specific types and their arguments. Most recent research on Event Extraction relies on pattern-based or feature-based approaches, trained on annotated corpora, to recognize combinations of event triggers, arguments, and other contextual information. These combinations may each appear in a variety of linguistic forms. Not all of these event expressions will have appeared in the training data, thus adversely affecting EE performance. In this paper, we demonstrate the overall effectiveness of Dependency Regularization techniques to generalize the patterns extracted from the training data to boost EE performance. We present experimental results on the ACE 2005 corpus, showing improvement over the baseline system, and consider the impact of the individual regularization rules.
机译:事件提取(EE)是一个具有挑战性的信息提取任务,旨在发现具有特定类型及其参数的事件触发器。最近关于事件提取的研究依赖于基于模式的或基于功能的方法,接受注释的语料库,识别事件触发,参数和其他上下文信息的组合。这些组合可以各自出现在各种语言形式中。并非所有这些事件表达都会出现在培训数据中,因此对EE性能产生不利影响。在本文中,我们展示了依赖性正则化技术的整体有效性,以概括从训练数据提取的模式来提高EE性能。我们在ACE 2005语料库上提出了实验结果,显示了基线系统的改进,并考虑各个正则化规则的影响。

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