利用合作作者网络识别科学出版物中的重要节点

Busaba Ngamwongtrakul, Tanasanee Phienthrakul
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引用次数: 0

摘要

数据量在不断增长。如果组织有正确的收集和分析数据的计划,这些数据可以为组织带来好处。在本文中,我们检验了研究引文信息的数据。许多作者创作有趣的文章,向其他研究人员传播信息。研究人员的关系网络也在不断增长。学习网络的研究人员有必要找出谁对网络中其他人的影响最大。研究人员不仅有很多论文,而且他们还有可能留在不同社区的共同作者。来自不同主题的适应性信息将构成原创论文。来自不同社区的研究人员之间的知识结合是创造有趣论文的好方法。本文提出了一种利用聚类系数和加权度中心性评价作者的新方法。该结果将用于对研究人员进行排序,并分析排名前5位的研究人员的属性。排序结果可以与流行的使用方法h-index相媲美。因此,采用社会网络分析测量方法对作者进行评价是一种很好的评价方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying important nodes in scientific publications using co-authorship network
The amounts of data are growing continuously. The data can make a benefit for the organization if they have the right plan to collect and analyze the data. In this paper, we examine data on research citation information. Many authors create interesting articles for propagating information to other researchers. The relationship network of researchers is also growing continuously. Learning network of researchers is necessary to find who has the most influence on others in the network. The researchers do not only have many papers but also they have co-authors who may stay in different communities. Adaptive information from various topics will make original papers. The combination of knowledge among researchers from various communities is a good way to create interesting papers. The aim of this article is to present a new measurement for author evaluation by using clustering coefficient and weighted degree centrality. The result will be used to rank researchers in order and analyze properties of the top 5 researchers. The ranking result can be comparable to the popular usage method, h-index. Hence, the new measurement for author evaluation using social network analysis measurement is a good way for author ranking.
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