Collaboration Network Analysis Based on Normalized Citation Count and Eigenvector Centrality

Anand Bihari, Sudhakar Tripathi, A. Deepak
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引用次数: 1

Abstract

In the research community, the estimation of the scholarly impact of an individual is based on either citation-based indicators or network centrality measures. The network-based centrality measures like degree, closeness, betweenness & eigenvector centrality and the citation-based indicators such as h-index, g-index & i10-index, etc., are used and all of the indicators give full credit to all of the authors of a particular article. This is although the contribution of the authors are different. To determine the actual contribution of an author in a particular article, we have applied arithmetic, geometric and harmonic counting methods for finding the actual contribution of an individual. To find the prominent actor in the network, we have applied eigenvector centrality. To authenticate the proposed analysis, an experimental study has been conducted on 186007 authors collaboration network, that is extracted from IEEE Xplore. The experimental results show that the geometric counting-based credit distribution among scholars gives better results than others.
基于归一化引文计数和特征向量中心性的协作网络分析
在研究界,对个人学术影响的估计是基于基于引用的指标或网络中心性度量。使用了基于网络的中心性度量,如度、接近度、中间度和特征向量中心性,以及基于引用的指标,如h指数、g指数和i10指数等,所有这些指标都给予了特定文章的所有作者充分的信任。尽管作者的贡献是不同的。为了确定作者在特定文章中的实际贡献,我们应用了算术,几何和谐波计数方法来寻找个人的实际贡献。为了找到网络中突出的参与者,我们应用了特征向量中心性。为了验证所提出的分析,我们对从IEEE Xplore中提取的186007作者协作网络进行了实验研究。实验结果表明,基于几何计数的学者学分分配方法效果较好。
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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