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Cold-Start Knowledge Base Population Using Ontology-Based Information Extraction with Conditional Random Fields

机译:使用带有条件随机字段的基于本体的信息提取来进行冷启动知识库填充

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In this tutorial we discuss how Conditional Random Fields can be applied to knowledge base population tasks. We are in particular interested in the cold-start setting which assumes as given an ontology that models classes and properties relevant for the domain of interest, and an empty knowledge base that needs to be populated from unstructured text. More specifically, cold-start knowledge base population consists in predicting semantic structures from an input document that instantiate classes and properties as defined in the ontology. Considering knowledge base population as structure prediction, we frame the task as a statistical inference problem which aims at predicting the most likely assignment to a set of ontologically grounded output variables given an input document. In order to model the conditional distribution of these output variables given the input variables derived from the text, we follow the approach adopted in Conditional Random Fields. We decompose the cold-start knowledge base population task into the specific problems of entity recognition, entity linking and slot-filling, and show how they can be modeled using Conditional Random Fields.
机译:在本教程中,我们讨论如何将条件随机字段应用于知识库填充任务。我们特别对冷启动设置感兴趣,该设置假设给定一个模型,该模型为与感兴趣领域相关的类和属性建模,并且需要一个空的知识库,该知识库需要从非结构化文本中填充。更具体地,冷启动知识库种群在于根据输入文档预测语义结构,该语义结构实例化本体中定义的类和属性。将知识库人口视为结构预测,我们将任务构造为统计推断问题,目的是在给定输入文档的情况下,预测最可能分配给一组基于本体论的输出变量。为了给定从文本派生的输入变量,对这些输出变量的条件分布进行建模,我们遵循条件随机字段中采用的方法。我们将冷启动知识库填充任务分解为实体识别,实体链接和空位填充等特定问题,并展示如何使用条件随机字段对它们进行建模。

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