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WebEL: Improving Entity Linking with Extra Web Contexts

机译:WebEL:使用额外的Web上下文改善实体链接

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Entity Linking is the task of determining the identity of textual entity mentions given a predefined Knowledge Graph (KG). Plenty of existing efforts have been made on this task using either "local" information (contextual information of the mention in the text), or "global" information (relations among candidate entities). However, either local or global information might be insufficient especially when the given text is short. To get richer local and global information for entity linking, we propose to enrich the context information for mentions by getting extra contexts from the web through Web Search Engines. Based on the intuition above, two novel attempts are made. The first one adds web-searched results into an embedding-based method to expand the mention's local information, where an attention mechanism is applied to help generate high-quality web contexts, while the second one uses the web contexts to extend the global information, i.e., finding and utilizing more extra relevant mentions from the web contexts with a graph-based model. Finally, we could combine the two models we proposed to use both extended local and global information from the extra web contexts. Our empirical study based on six real-world datasets shows that using extra web contexts to extend the local and global information could effectively improve the performance of entity linking.
机译:在给定预定义的知识图(KG)的情况下,实体链接是确定文本实体提及的身份的任务。已经使用“本地”信息(文本中提及的上下文信息)或“全局”信息(候选实体之间的关系)在此任务上进行了大量现有工作。但是,本地或全局信息可能不足,尤其是当给定文本简短时。为了获得更丰富的本地和全局信息以进行实体链接,我们建议通过Web搜索引擎从Web上获取额外的上下文来丰富上下文信息以供提及。基于上述直觉,进行了两种新颖的尝试。第一个方法是将网络搜索结果添加到基于嵌入的方法中,以扩展提及内容的本地信息,在此方法中,注意力机制被应用来帮助生成高质量的Web上下文,而第二个方法则使用网络上下文来扩展全局信息,也就是说,通过基于图的模型从Web上下文中找到并利用更多额外的相关提及。最后,我们可以结合我们提出的两个模型,以使用来自额外Web上下文的扩展的本地和全局信息。我们基于六个现实世界数据集的经验研究表明,使用额外的Web上下文扩展本地和全局信息可以有效提高实体链接的性能。

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