Eigenvector Centrality: Illustrations Supporting the Utility of Extracting More Than One Eigenvector to Obtain Additional Insights into Networks and Interdependent Structures

Q2 Social Sciences
D. Iacobucci, Rebecca McBride, Deidre Popovich
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引用次数: 8

Abstract

Abstract Among the many centrality indices used to detect structures of actors’ positions in networks is the use of the first eigenvector of an adjacency matrix that captures the connections among the actors. This research considers the seeming pervasive current practice of using only the first eigenvector. It is shows that, as in other statistical applications of eigenvectors, subsequent vectors can also contain illuminating information. Several small examples, and Freeman’s EIES network, are used to illustrate that while the first eigenvector is certainly informative, the second (and subsequent) eigenvector(s) can also be equally tractable and informative.
特征向量中心性:支持提取多个特征向量以获得对网络和相互依赖结构的额外见解的说明
摘要在用于检测网络中参与者位置结构的许多中心性指标中,使用了捕获参与者之间连接的邻接矩阵的第一个特征向量。这项研究考虑了目前似乎普遍存在的只使用第一特征向量的做法。结果表明,与特征向量的其他统计应用一样,后续向量也可以包含启发性信息。几个小例子和Freeman的EIES网络被用来说明,虽然第一个特征向量肯定是有信息的,但第二个(和随后的)特征向量也可以同样容易处理和有信息。
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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来源期刊
Journal of Social Structure
Journal of Social Structure Social Sciences-Sociology and Political Science
CiteScore
1.30
自引率
0.00%
发文量
0
审稿时长
24 weeks
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