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Mining potential research synergies from co-authorship graphs using power graph analysis

机译:使用功率图分析从共同作者图挖掘潜在的研究协同作用

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摘要

Bibliographic databases are a prosperous field for data mining research and social network analysis. They contain rich information, which can be analysed across different dimensions (e.g., author, year, venue, and topic) and can be exploited in multiple ways. The representation and visualisation of bibliographic databases as graphs and the application of data mining techniques can help us uncover interesting knowledge concerning potential synergies between researchers, possible matchings between researchers and venues, candidate reviewers for a paper or even the ideal venue for presenting a research work. In this paper, we propose a novel representation model for bibliographic data, which combines co-authorship and content similarity information, and allows for the formation of scientific networks. Using a graph visualisation tool from the biological domain, we are able to provide comprehensive visualisations that help us uncover hidden relations between authors and suggest potential synergies between researchers or groups.
机译:书目数据库是数据挖掘研究和社交网络分析的繁荣领域。它们包含丰富的信息,可以在不同的维度(例如,作者,年份,地点和主题)进行分析,并且可以通过多种方式加以利用。书目数据库以图形表示和可视化以及数据挖掘技术的应用可以帮助我们发现有趣的知识,这些知识涉及研究人员之间的潜在协同作用,研究人员与场所之间的可能匹配,论文的候选审稿人,甚至是展示研究工作的理想场所。在本文中,我们提出了一种新颖的书目数据表示模型,该模型结合了共同作者和内容相似性信息,并允许形成科学网络。使用来自生物学领域的图形可视化工具,我们能够提供全面的可视化效果,帮助我们发现作者之间的隐藏关系,并建议研究人员或研究小组之间的潜在协同作用。

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