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Research contributions published on betweenness centrality algorithm: modelling to analysis in the context of social networking

机译:关注中心算法之间发表的研究贡献:在社交网络背景下进行分析的建模

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Social network analysis has become an inevitable tool for the prosperity of modern civilisation. The process of accumulating relational information from structured/unstructured sources, modelling networks, and extracting actionable information requires expertising in several knowledge domains. This paper presents an approach for the analysis of documents in the context of social networking. The approach is illustrated by using a case study related to research contributions published on betweenness centrality algorithm. Distinct networks in terms of article, article-author, and author are modelled and analysed to understand the insights. Consequently, it is possible to identify crucial articles, active authors, groups along with their expertise, research directions, the correlation among documents, and many more. Thus the paper conferred techniques for document collection, pre-processing, network modelling, and network analysis methods for the directed, undirected, weighted, unweighted, connected, disconnected, and bipartite networks.
机译:社会网络分析已成为现代文明繁荣的必然工具。累积来自结构化/非结构化源,建模网络和提取可操作信息的关系信息的过程需要在几个知识域中的专业化。本文提出了一种在社交网络背景下分析文件的方法。通过使用与中心地位算法之间发表的研究贡献相关的案例研究来说明该方法。在文章,文章作者和作者方面的独特网络是建模和分析以了解洞察力。因此,可以识别关键的文章,积极作者,群体以及他们的专业知识,研究方向,文件之间的相关性等等。因此,纸张赋予了用于指向,无向,加权,未加权,连接,断开和二分网络的文档收集,预处理,网络建模和网络分析方法的技术。

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