The Challenges of Cross-Document Coreference Resolution for Email

Xue Li, Sara Magliacane, Paul Groth
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Abstract

Long-form conversations such as email are an important source of information for knowledge capture. For tasks such as knowledge graph construction, conversational search, and entity linking, being able to resolve entities from across documents is important. Building on recent work on within document coreference resolution for email, we study for the first time a cross-document formulation of the problem. Our results show that the current state-of-the-art deep learning models for general cross-document coreference resolution are insufficient for email conversations. Our experiments show that the general task is challenging and, importantly for knowledge intensive tasks, coreference resolution models that only treat entity mentions perform worse. Based on these results, we outline the work needed to address this challenging task.
电子邮件跨文档共同参考解析的挑战
长篇对话(如电子邮件)是获取知识的重要信息源。对于知识图谱构建、会话搜索和实体链接等任务,能够跨文档解析实体是很重要的。基于最近对电子邮件文档内共同参考解析的研究,我们首次研究了该问题的跨文档表述。我们的研究结果表明,目前最先进的通用跨文档共同参考分辨率深度学习模型不足以用于电子邮件对话。我们的实验表明,一般任务是具有挑战性的,重要的是,对于知识密集型任务,只处理实体提及的共同参考解决模型表现更差。根据这些结果,我们概述了解决这一具有挑战性的任务所需的工作。
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