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Joint Entity and Event Coreference Resolution across Documents

机译:跨文档的联合实体和事件共同引用解决方案

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摘要

We introduce a novel coreference resolution system that models entities and events jointly. Our iterative method cautiously constructs clusters of entity and event mentions using linear regression to model cluster merge operations. As clusters are built, information flows between entity and event clusters through features that model semantic role dependencies. Our system handles nominal and verbal events as well as entities, and our joint formulation allows information from event coreference to help entity coreference, and vice versa. In a cross-document domain with comparable documents, joint coreference resolution performs significantly better (over 3 CoNLL F1 points) than two strong baselines that resolve entities and events separately.
机译:我们介绍了一种新颖的共同参照解析系统,该系统可以共同对实体和事件进行建模。我们的迭代方法使用线性回归谨慎地构造实体和事件提及的聚类,以对聚类合并操作进行建模。构建集群时,信息通过对语义角色依赖性进行建模的功能在实体集群和事件集群之间流动。我们的系统处理名义事件和口头事件以及实体,并且我们的联合表述允许事件共同引用中的信息来帮助实体共同引用,反之亦然。在具有可比较文档的跨文档域中,联合共引用解析的性能(超过3个CoNLL F1点)明显优于分别解决实体和事件的两个强基准。

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