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Joint Entity Recognition and Linking in Technical Domains Using Undirected Probabilistic Graphical Models

机译:使用无向概率图形模型的技术领域中的联合实体识别和链接

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摘要

The problems of recognizing mentions of entities in texts and linking them to unique knowledge base identifiers have received considerable attention in recent years. In this paper we present a probabilistic system based on undirected graphical models that jointly addresses both the entity recognition and the linking task. Our framework considers the span of mentions of entities as well as the corresponding knowledge base identifier as random variables and models the joint assignment using a factorized distribution. We show that our approach can be easily applied to different technical domains by merely exchanging the underlying ontology. On the task of recognizing and linking disease names, we show that our approach outperforms the state-of-the-art systems DNorm and Tag-gerOne, as well as two strong lexicon-based baselines. On the task of recognizing and linking chemical names, our system achieves comparable performance to the state-of-the-art.
机译:近年来,识别文本中提到的实体并将其链接到唯一的知识库标识符的问题已经引起了广泛的关注。在本文中,我们提出了一种基于无向图模型的概率系统,该系统可以共同解决实体识别和链接任务。我们的框架将提及实体的范围以及相应的知识库标识符视为随机变量,并使用因数分布对联合分配进行建模。我们表明,仅交换基础本体就可以轻松地将我们的方法应用于不同的技术领域。在识别和链接疾病名称的任务上,我们证明了我们的方法优于最新的系统DNorm和Tag-gerOne以及两个基于词典的强大基准。在识别和链接化学名称的任务上,我们的系统可达到与最新技术相当的性能。

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