Analyzing future communities in growing citation networks

Sukhwan Jung, Aviv Segev
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引用次数: 31

Abstract

Citation networks contain temporal information about what researchers are interested in at a certain time. A community in such a network is built around either a renowned researcher or a common research field; either way, analyzing how the community will change in the future will give insight into the research trend in the future. The paper proposes methods to analyze how communities change over time in the citation network graph without additional external information and based on node and link prediction and community detection. Different combinations of the proposed methods are also analyzed. Experiments show that the proposed methods can identify the changes in citation communities multiple years in the future with performance differing according to the analyzed time span. Furthermore, the method is shown to produce higher performance when analyzing communities to be disbanded and to be formed in the future.
在不断增长的引文网络中分析未来的社区
引文网络包含研究人员在特定时间感兴趣的内容的时间信息。在这样的网络中,一个社区要么是围绕着一个著名的研究者,要么是围绕一个共同的研究领域建立起来的;无论哪种方式,分析未来社区将如何变化将有助于洞察未来的研究趋势。本文提出了基于节点和链接预测以及社区检测的方法,在没有额外外部信息的情况下分析引文网络图中社区随时间的变化。并对所提出方法的不同组合进行了分析。实验表明,该方法可以识别未来数年引文群落的变化,并根据分析的时间跨度有所不同。此外,该方法在分析将要解散的社区和将要在未来形成的社区时可以产生更高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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