使用图形在电子邮件中进行上下文搜索和名称消歧

Einat Minkov, William W. Cohen, A. Ng
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引用次数: 191

摘要

文本的相似性度量历来是解决信息检索问题的重要工具。然而,在许多有趣的设置中,文档通常与其他文档以及其他非文本对象紧密相连:例如,电子邮件消息通过标题信息连接到其他消息。在本文中,我们考虑了文档和嵌入在图中的其他对象的扩展相似度量,通过延迟图漫步来促进。我们为电子邮件数据提供了这个框架的详细实例,其中内容、社交网络和时间轴集成在一个结构图中。建议的框架针对两个与电子邮件相关的问题进行评估:消除电子邮件文档中的名称歧义和线程。我们表明,基于图走相似度度量的重新排序方案通常优于基线方法,并且可以通过使用适当的学习方法进一步改进。
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Contextual search and name disambiguation in email using graphs
Similarity measures for text have historically been an important tool for solving information retrieval problems. In many interesting settings, however, documents are often closely connected to other documents, as well as other non-textual objects: for instance, email messages are connected to other messages via header information. In this paper we consider extended similarity metrics for documents and other objects embedded in graphs, facilitated via a lazy graph walk. We provide a detailed instantiation of this framework for email data, where content, social networks and a timeline are integrated in a structural graph. The suggested framework is evaluated for two email-related problems: disambiguating names in email documents, and threading. We show that reranking schemes based on the graph-walk similarity measures often outperform baseline methods, and that further improvements can be obtained by use of appropriate learning methods.
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