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Knowledge element relation extraction using conditional random fields

机译:使用条件随机场的知识元素关系提取

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摘要

Knowledge element relation extraction is to find predefined relations between pairs of knowledge elements from text documents. As a novel form for organization and management of knowledge resources, knowledge element relation can be utilized to establish knowledge navigation system, knowledge retrieval system and collaborative knowledge construction system. In this paper, we employ conditional random fields (CRFs) to extract relations between knowledge elements from natural language documents by treating the relation extraction task as a sequence labeling problem. We first introduce three rules to generate candidate relation instances, and then incorporate various features including terms, semantic type, distance and context information to represent candidate relation instances. Experimental evaluation shows that our method achieves better performance than previous work. It also indicates that CRFs outperform other probabilistic models i.e. hidden Markov model and maximum entropy, and show effective in knowledge element relation extraction.
机译:知识元素关系提取是从文本文档中找到知识元素对之间的预定义关系。作为知识资源组织管理的一种新形式,知识元素关系可以用来建立知识导航系统,知识检索系统和协作知识构建系统。在本文中,我们使用条件随机场(CRF)从自然语言文档中提取知识元素之间的关系,方法是将关系提取任务视为序列标签问题。我们首先介绍三个规则以生成候选关系实例,然后合并各种功能,包括术语,语义类型,距离和上下文信息以表示候选关系实例。实验评估表明,我们的方法比以前的工作具有更好的性能。这也表明CRF优于其他概率模型,即隐马尔可夫模型和最大熵,并且在知识元素关系提取中显示出有效的效果。

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