Veröffentlichung

Titel:
Homophily at a glance: visual homophily estimation in network graphs is robust under time constraints
AutorInnen:
Robert Gaschler
Daniel Reimann
André Schulz
Kategorie:
Artikel in Zeitschriften
erschienen in:
SN Social Sciences 1, 139 (2021)
Abstract:

Network graphs are used for high-stake decision making in medical and other contexts. For instance, graph drawings conveying relatedness can be relevant in the context of spreading diseases. Node-link diagrams can be used to visually assess the degree of homophily in a network—a condition where a presence of the link is more likely when nodes are similar. In an online experiment (N = 531), we tested how robustly laypeople can judge homophily from node-link diagrams and how variation of time constraints and layout of the diagrams affect judgments. The results showed that participants were able to give appropriate judgments. While granting more time led to better performance, the effects were small. Rather, the first seconds account for most of the information an individual can extract from the graphs. Furthermore, we showed a difference in performance between two types of layouts (bipartite and polarized). Results have consequences for communicating the degree of homophily in network graphs to the public.

Download:
Springer [ PDF]
BibTeX-Eintrag:
@article{article, author = {Reimann, Daniel and Schulz, André and Gaschler, Robert}, year = {2021}, month = {05}, pages = {}, title = {Homophily at a glance: visual homophily estimation in network graphs is robust under time constraints}, volume = {1}, journal = {SN Social Sciences}, doi = {10.1007/s43545-021-00153-2} }
Christoph Doppelbauer | 08.04.2024