基于标签映射的实体属性提取方法研究

Huilin Liu, Cheng Chen, Liwei Zhang, Guoren Wang
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引用次数: 3

摘要

随着计算机、互联网等新媒体的快速发展,从Web文本中提取有价值的实体属性信息具有重要意义。针对这一问题,本文提出了SALmap模型,该模型首先调用种子方法,通过定义数据格式规则来创建通用的候选属性标签集。然后利用属性值信息和最大熵模型构造属性与标签之间的映射关系,并对实体实例进行标注。最后,将隐马尔可夫模型应用于相关实体属性提取。实验证明,SALmap模型能显著提高实体属性提取的精度和性能。
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The research of label-mapping-based entity attribute extraction
With the rapid development of new media, such as computer and Internet, extract valuable entity attribute information from Web text can be significant. Aiming at this problem, this paper puts forward SALmap, this model calls seed method at first, which will create common candidate attribute label sets by defining data format rules. Then we construct the mapping relationship between the attributes and the labels using attribute value information and the maximum entropy model, and label the entity instance as well. Finally, hidden Markov model is applied to the relevant entity attribute extraction. Experiments prove SALmap model can significantly improve the precision and performance of entity attribute extraction.
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