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A Generative Entity-Mention Model for Linking Entities with Knowledge Base

机译:用于将实体链接有知识库的生成实体模型

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Linking entities with knowledge base (entity linking) is a key issue in bridging the textual data with the structural knowledge base. Due to the name variation problem and the name ambiguity problem, the entity linking decisions are critically depending on the heterogenous knowledge of entities. In this paper, we propose a generative probabilistic model, called entity-mention model, which can leverage heterogenous entity knowledge (including popularity knowledge, name knowledge and context knowledge) for the entity linking task. In our model, each name mention to be linked is modeled as a sample generated through a three-step generative story, and the entity knowledge is encoded in the distribution of entities in document P(e), the distribution of possible names of a specific entity P(se), and the distribution of possible contexts of a specific entity P(ce). To find the referent entity of a name mention, our method combines the evidences from all the three distributions P(e), P(se) and P(ce). Experimental results show that our method can significantly outperform the traditional methods.
机译:通过知识库(实体链接)链接实体是遍历具有结构知识库的文本数据的关键问题。由于名称变异问题和名称歧义问题,实体链接决策既批判性地取决于实体的异常知识。在本文中,我们提出了一种代表性概率模型,称为实体提升模型,可以利用异构实体知识(包括所在的实体知识(包括人气知识,名称知识和上下文知识)。在我们的模型中,提到要链接的每个名称被建模为通过三步生成故事生成的样本,并且实体知识在文档P(E)中的实体分发中编码,特定的可能名称的分布实体p(s e),以及特定实体p(c e)可能的上下文的分布。要查找名称提及的指指的实体,我们的方法将来自所有三个分布P(e),p(s e)和p(c e)的证据相结合。实验结果表明,我们的方法可以显着优于传统方法。

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