基于自举概率分类器的事件标称提及自动提取

C. Creswell, Matthew J. Beal, John Chen, T. Cornell, L. Nilsson, R. Srihari
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引用次数: 17

摘要

大多数提取事件的方法都集中在动词中的提及。然而,许多提到的事件都是以名词短语的形式出现的。检测它们可以提高事件提取的召回率,为检测事件之间的关系提供基础。本文描述了一种弱监督检测名义事件提及的方法,该方法结合了词义消歧(WSD)和词汇习得技术,创建了一个分类器,将名词短语标记为表示事件或非事件。分类器使用事件和非事件上下文的bootstrap概率生成模型。上下文是词法锚定的语义依赖关系,np出现在其中。我们的方法大大改进了自引导,并且轻松优于基于更大的手工资源的词法查找方法。
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Automatically Extracting Nominal Mentions of Events with a Bootstrapped Probabilistic Classifier
Most approaches to event extraction focus on mentions anchored in verbs. However, many mentions of events surface as noun phrases. Detecting them can increase the recall of event extraction and provide the foundation for detecting relations between events. This paper describes a weakly-supervised method for detecting nominal event mentions that combines techniques from word sense disambiguation (WSD) and lexical acquisition to create a classifier that labels noun phrases as denoting events or non-events. The classifier uses boot-strapped probabilistic generative models of the contexts of events and non-events. The contexts are the lexically-anchored semantic dependency relations that the NPs appear in. Our method dramatically improves with bootstrapping, and comfortably outperforms lexical lookup methods which are based on very much larger hand-crafted resources.
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