基于重叠社区检测的跨学科研究热点检测

Lu Huang, Xiang Jia, Yi Zhang, Xiao Zhou, Yihe Zhu
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引用次数: 2

摘要

在以往的一系列研究中已经观察到学科融合,它在科学、技术和创新方面创造了巨大的利益。然而,如何检测和区分跨学科领域的热点不仅是研究人员面临的挑战,也是政府和行业利益相关者面临的挑战。利用2012 - 2017年在信息科学与人工智能领域发表的学术论文,构建了关键词共现网络。然后用统计方法找出词频和关键词k-团分布的规律。在此基础上,利用基于clique per渗法(CPM)算法的CFinder软件实现了网络的可视化。最后,我们发现“Social media”、“conceptual model”、“Big Data”和“Crowdsourcing”是本案例跨学科研究的热点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Hotspots in Interdisciplinary Research Based on Overlapping Community Detection
Disciplinary fusion has been observed in a range of previous studies, which creates great benefit in science, technology, and innovation. However, how to detect and distinguish the hotspots in interdisciplinary is a challenge for not only researchers but also stakeholders in government and industry sectors. A keywords' co-occurrence network is constructed by using academic articles published between 2012 and 2017 in the field of Information Science and Artificial Intelligence. Then statistical methods are applied for finding the regularities of distributions of term frequency and keywords' k-cliques. Furthermore, the software CFinder, which is based on clique percolation method (CPM) algorithm and is used for detecting overlapping communities, is utilized to visualize the network. At last, we find that "Social media", "conceptual model, "Big Data" and "Crowdsourcing" are the hotspots of interdisciplinary research in this case.
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