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A Lazy Learning Model for Entity Linking Using Query-Specific Information

机译:使用查询特定信息的实体链接的惰性学习模型

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Entity linking disambiguates a mention of an entity in text to a Knowledge Base (KB). Most previous studies disambiguate a mention of a name (e.g. "AZ") based on the distribution knowledge learned from labeled instances, which are related to other names (e.g. "Hoffman","Chad Johnson", etc.). The gaps among the distributions of the instances related to different names hinder the further improvement of the previous approaches. This paper proposes a lazy learning model, which allows us to improve the learning process with the distribution information specific to the queried name (e.g."AZ"). To obtain this distribution information, we automatically label some relevant instances for the queried name leveraging its unambiguous synonyms. Besides, another advantage is that our approach still can benefit from the labeled data related to other names (e.g. "Hoffman ", "Chad Johnson", etc.), because our model is trained on both the labeled data sets of queried and other names by mining their shared predictive structure.
机译:实体链接消除了文本中对知识库(KB)的提及。以前的大多数研究都基于从加标签的实例中获悉的分布知识来消除对名称的提及(例如“ AZ”),这些分布知识与其他名称(例如“霍夫曼”,“查德·约翰逊”等)相关。与不同名称相关的实例分布之间的差距阻碍了先前方法的进一步改进。本文提出了一种惰性学习模型,该模型可让我们利用特定于所查询名称(例如“ AZ”)的分布信息来改善学习过程。为了获得此分发信息,我们利用其明确的同义词自动为查询名称标记一些相关实例。此外,另一个优势是我们的方法仍然可以从与其他名称(例如“霍夫曼”,“查德·约翰逊”等)相关的标记数据中受益,因为我们的模型是在查询的和其他名称的标记数据集上进行训练的通过挖掘他们共享的预测结构。

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