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A Machine Learning Approach to Coreference Resolution of Noun Phrases

机译:名词短语共指解析的机器学习方法

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摘要

In this paper, we present a learning approach to coreference resolution of noun phrases in unrestricted text. The approach learns from a small, annotated corpus and the task includes resolving not just a certain type of noun phrase (e.g., pronouns) but rather general noun phrases. It also does not restrict the entity types of the noun phrases; that is, coreference is assigned whether they are of "organization," "person," or other types. We evaluate our approach on common data sets (namely, the MUC-6 and MUC-7 coreference corpora) and obtain encouraging results, indicating that on the general noun phrase coreference task, the learning approach holds promise and achieves accuracy comparable to that of nonlearning approaches. Our system is the first learning-based system that offers performance comparable to that of state-of-the-art nonlearning systems on these data sets.
机译:在本文中,我们提出了一种用于无限制文本中名词短语的共指解析的学习方法。该方法是从一个小的带注释的语料库中学习的,任务不仅包括解析某种类型的名词短语(例如代词),而且还解析普通的名词短语。它还不限制名词短语的实体类型。也就是说,无论是“组织”,“人”还是其他类型,都可以指定共指。我们对通用数据集(即MUC-6和MUC-7共指语料库)进行了评估,并获得了令人鼓舞的结果,表明在一般名词短语共指任务上,学习方法具有希望,并且其准确性可与非学习方法相提并论。方法。我们的系统是第一个基于学习的系统,在这些数据集上提供的性能可与最新的非学习系统相媲美。

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