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Domain Specific Facts Extraction Using Weakly Supervised Active Learning Approach

机译:使用弱监督主动学习方法的领域特定事实提取

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An ontology is defined using concepts and relationships between the concepts. In this paper, we focus on second problem: relation extraction from plain text. Generic Knowledge Bases like YAGO, Freebase, and DBPedia have made accessible huge collections of facts and their properties from various domains. But acquiring and maintaining various facts and their relations from domain specific corpus becomes very important and challenging task due to low availability of annotated data. Here, we proposed a label propagation based semi-supervised approach for relation extraction by choosing most informative instances for annotation. We also proposed weakly supervised approach for data annotation using generic ontologies like Freebase, which further reduces the cost of annotating data manually. We checked efficiency of our approach by performing experiments on various domain specific corpora.
机译:使用概念之间的概念和关系定义了本体。在本文中,我们专注于第二个问题:从纯文本中提取的关系。像Yago,FreeBase和DBPedia这样的通用知识库已经取得了巨大的巨大事实及其来自各个领域的财产。但由于低可用性数据,获取和维护各种事实及其与域特定语料库的关系成为非常重要和具有挑战性的任务。在这里,我们提出了一种基于标签传播,通过选择用于注释的大多数信息性实例来实现基于半导体的半导体方法。我们还提出了使用像FreeBase等泛型本体的数据注释的弱监督方法,这进一步降低了手动注释数据的成本。我们通过对各个领域特定的实验进行实验检查了我们的方法的效率。

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