Content area

Abstract

Egocentric networks represent a popular research design for network research. However, to what extent and under what conditions egocentric network centrality can serve as reasonable substitutes for their sociocentric counterparts are important questions to study. The answers to these questions are uncertain simply because of the large variety of networks. Hence, this paper aims to provide exploratory answers to these questions by analyzing both empirical and simulated data. Through analyses of various empirical networks (including some classic albeit small ones), this paper shows that egocentric betweenness approximates sociocentric betweenness quite well (the correlation is high across almost all the networks being examined) while egocentric closeness approximates sociocentric closeness only reasonably well (the correlation is a bit lower on average with a larger variance across networks). Simulations also confirm this finding. Analyses further show that egocentric approximations of betweenness and closeness seem to work well in different types of networks (as featured by network size, density, centralization, reciprocity, transitivity, and geodistance). Lastly, the paper briefly presents three ideas to help improve egocentric approximations of centrality measures.

Details

Title
Comparing Egocentric and Sociocentric Centrality Measures in Directed Networks
Author
An, Weihua 1   VIAFID ORCID Logo 

 Departments of Sociology & Quantitative Theory and Methods, Atlanta, Georgia 
Pages
1290-1318
Publication year
2024
Publication date
Aug 2024
Publisher
SAGE PUBLICATIONS, INC.
ISSN
00491241
e-ISSN
15528294
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
3089903399
Copyright
© The Author(s) 2022