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SkipCor: Skip-Mention Coreference Resolution Using Linear-Chain Conditional Random Fields

机译:SkipCor:使用线性链条件随机场的跳过提及共指分辨率

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摘要

Coreference resolution tries to identify all expressions (called mentions) in observed text that refer to the same entity. Beside entity extraction and relation extraction, it represents one of the three complementary tasks in Information Extraction. In this paper we describe a novel coreference resolution system SkipCor that reformulates the problem as a sequence labeling task. None of the existing supervised, unsupervised, pairwise or sequence-based models are similar to our approach, which only uses linear-chain conditional random fields and supports high scalability with fast model training and inference, and a straightforward parallelization. We evaluate the proposed system against the ACE 2004, CoNLL 2012 and SemEval 2010 benchmark datasets. SkipCor clearly outperforms two baseline systems that detect coreferentiality using the same features as SkipCor. The obtained results are at least comparable to the current state-of-the-art in coreference resolution.
机译:共指解析试图识别观察到的文本中引用同一实体的所有表达式(称为提及)。除了实体提取和关系提取之外,它还代表信息提取中的三个补充任务之一。在本文中,我们描述了一种新颖的共指解析系统SkipCor,该系统将问题重新制定为序列标记任务。现有的无监督,无监督,成对或基于序列的模型均与我们的方法相似,后者仅使用线性链条件随机字段,并通过快速的模型训练和推断以及简单的并行化支持高可伸缩性。我们根据ACE 2004,CoNLL 2012和SemEval 2010基准数据集评估了建议的系统。 SkipCor明显胜过使用与SkipCor相同的功能检测核心潜在性的两个基准系统。所获得的结果至少可以与当前的共参考分辨率相媲美。

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