Evaluation of named entity coreference

Oshin Agarwal, Sanjay Subramanian, A. Nenkova, D. Roth
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引用次数: 11

Abstract

In many NLP applications like search and information extraction for named entities, it is necessary to find all the mentions of a named entity, some of which appear as pronouns (she, his, etc.) or nominals (the professor, the German chancellor, etc.). It is therefore important that coreference resolution systems are able to link these different types of mentions to the correct entity name. We evaluate state-of-the-art coreference resolution systems for the task of resolving all mentions to named entities. Our analysis reveals that standard coreference metrics do not reflect adequately the requirements in this task: they do not penalize systems for not identifying any mentions by name to an entity and they reward systems even if systems find correctly mentions to the same entity but fail to link these to a proper name (she–the student–no name). We introduce new metrics for evaluating named entity coreference that address these discrepancies and show that for the comparisons of competitive systems, standard coreference evaluations could give misleading results for this task. We are, however, able to confirm that the state-of-the art system according to traditional evaluations also performs vastly better than other systems on the named entity coreference task.
命名实体共引用的计算
在许多NLP应用程序中,如对命名实体的搜索和信息提取,有必要找到所有提到的命名实体,其中一些以代词(she, his等)或名词(教授,德国总理等)的形式出现。因此,重要的是,共同引用解析系统能够将这些不同类型的提及链接到正确的实体名称。我们评估了最先进的共参考解析系统,以解决所有提到的命名实体的任务。我们的分析表明,标准的共参考指标并没有充分反映这项任务的要求:它们不会因为系统没有识别任何实体的名称而惩罚系统,即使系统正确地发现了同一实体的提及,但却没有将这些提及与一个适当的名称(她-学生-没有名字)联系起来,它们也会奖励系统。我们引入了评估命名实体共参考的新指标,以解决这些差异,并表明对于竞争系统的比较,标准的共参考评估可能会对这项任务产生误导性的结果。然而,我们能够确认,根据传统评估的最先进的系统在命名实体共同引用任务上的表现也比其他系统好得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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