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HEER: Heterogeneous Graph Embedding for Emerging Relation Detection from News

机译:HEER:异质图嵌入新兴关系中的新兴关系

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Real-world knowledge is growing rapidly nowadays. New entities arise with time, resulting in large volumes of relations that do not exist in current knowledge graphs (KGs). These relations containing at least one new entity are called emerging relations. They often appear in news, and hence the latest information about new entities and relations can be learned from news timely. In this paper, we focus on the problem of discovering emerging relations from news. However, there are several challenges for this task: (1) at the beginning, there is little information for emerging relations, causing problems for traditional sentence-based models; (2) no negative relations exist in KGs, creating difficulties in utilizing only positive cases for emerging relation detection from news; and (3) new relations emerge rapidly, making it necessary to keep KGs up to date with the latest emerging relations. In order to address these issues, we start from a global graph perspective and propose a novel Heterogeneous graph Embedding framework for Emerging Relation detection (HEER) that learns a classifier from positive and unlabeled instances by utilizing information from both news and KGs. Furthermore, we implement HEER in an incremental manner to timely update KGs with the latest detected emerging relations. Extensive experiments on real-world news datasets demonstrate the effectiveness of the proposed HEER model.
机译:现实世界知识现在正在迅速增长。新实体出现随时间的时间,导致当前知识图中不存在的大量关系(KGS)。这些关系包含至少一个新实体称为新兴关系。他们经常出现在新闻中,因此可以及时从新闻中学到有关新实体和关系的最新信息。在本文中,我们专注于发现新兴关系的问题。但是,这项任务有几个挑战:(1)在开始时,几乎没有信息,可以获得新兴关系的信息,导致基于句型模型的问题; (2)在公斤时没有存在负面关系,在新闻新闻中仅采用积极案例产生困难; (3)新关系迅速出现,使得kgs与最新的新兴关系保持最新。为了解决这些问题,我们从全局图形透视开始,并提出了一种新的异构图形嵌入框架,用于新兴关系检测(HEER),通过利用来自新闻和KG的信息来了解来自正和未标记的实例的分类器。此外,我们以逐步的方式实施HEER,以及时更新KGS,并通过最新检测到的新兴关系。关于现实世界新闻数据集的广泛实验证明了拟议的HEER模型的有效性。

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