基于概念图的可视化属性网络构建

Jing Yang, Lei Zhang, Jun Feng, Hengwei Liu
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引用次数: 0

摘要

本文提出了一种基于概念图(CGs)的视觉性属性(属性在视觉上可感知的程度)提取方法。该方法通过提供小规模的种子属性,通过主实体匹配和句子选择两步获取包含这些种子属性的上下文,然后将选择的句子转换为CG模板,在HowNet词典的基础上对其语义信息进行系统扩展,通过计算CG模板与文本CG的相似度提取属性概念。然后计算这些属性概念的可见度,并保留可见度值大于阈值的属性。最后,通过引入世界知识来构建属性之间的关系。实验证明了基于概念图的方法与现有方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Construction of Visualness Attributes Network Based on Conceptual Graphs
This paper proposed a new method for extracting visualness attributes (the extent to which an attribute can be perceived visually) that based on conceptual graphs (CGs). By providing a small scale seed attributes, this method acquire the context which contain these seed attributes by two steps, primary entity matching and sentence selection, then transform the selected sentences into CG templates, after systematic expansion of its semantic information on the basis of HowNet lexicon, extract the attribute concepts by computing the similarity between CG templates and textual CGs, then compute the visualness of these attribute concepts and retain the attributes with the visualness value greater than the threshold. At last, we construct the relationship among the attributes by bringing in world knowledge. Experiments have demonstrated the effectiveness of our conceptual graph based method when compared with the state of art ones.
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