基于关键词关系网络的计算机工程领域研究论文数据库知识图谱

Bo-Seok Jung, Yung-Keun Kwon, Seung-Jin Kwak
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引用次数: 5

摘要

最近在各个领域得到应用的知识地图是发现隐藏在大量信息中的特征,并显示出有形的输出,以理解发现的意义。本文利用2000 ~ 2010年国内计算机工程领域期刊论文数据库,构建了基于关键词关系网络的研究趋势分析知识图谱。从这个知识图谱中,我们可以通过考察关键词所属的连接组件在关键词关系网络中的大小变化,推断出与特定关键词相关的研究主题的影响变化。此外,与随机网络相比,我们观察到关键字关系网络中最大连接分量的大小相对较小,并且高相似性关键字对组聚集在其中。这意味着最大连接分量所对应的研究领域并没有那么大,其中包含的许多小尺度课题是高度聚集的,彼此之间是松散连接的。我们提出的知识图谱可以被认为是研究趋势分析的一种方法,而传统的方法如分析单个关键字的频率是无法获得这些结果的。
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A Knowledge Map Based on a Keyword-Relation Network by Using a Research Paper Database in the Computer Engineering Field
A knowledge map, which has been recently applied in various fields, is discovering characteristics hidden in a large amount of information and showing a tangible output to understand the meaning of the discovery. In this paper, we suggested a knowledge map for research trend analysis based on keyword-relation networks which are constructed by using a database of the domestic journal articles in the computer engineering field from 2000 through 2010. From that knowledge map, we could infer influential changes of a research topic related a specific keyword through examining the change of sizes of the connected components to which the keyword belongs in the keyword-relation networks. In addition, we observed that the size of the largest connected component in the keyword-relation networks is relatively small and groups of high-similarity keyword pairs are clustered in them by comparison with the random networks. This implies that the research field corresponding to the largest connected component is not so huge and many small-scale topics included in it are highly clustered and loosely-connected to each other. our proposed knowledge map can be considered as a approach for the research trend analysis while it is impossible to obtain those results by conventional approaches such as analyzing the frequency of an individual keyword.
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