Assessing the bias in samples of large online networks

González-Bailón, Sandra; Wang, Ning; Rivero, Alejandro; Borge-Holthoefer, Javier; Moreno, Yamir
We consider the sampling bias introduced in the study of online networks when collecting data through publicly available APIs (application programming interfaces). We assess differences between three samples of Twitter activity; the empirical context is given by political protests taking place in May 2012. We track online communication around these protests for the period of one month, and reconstruct the network of mentions and re-tweets according to the search and the streaming APIs, and to different filtering parameters. We find that smaller samples do not offer an accurate picture of peripheral activity; we also find that the bias is greater for the network of mentions, partly because of the higher influence of snowballing in identifying relevant nodes. We discuss the implications of this bias for the study of diffusion dynamics and political communication through social media, and advocate the need for more uniform sampling procedures to study online communication. © 2014 Elsevier B.V.
Research areas:
Year:
2014
Type of Publication:
Article
Keywords:
Graph comparison; Measurement error; Political communication; Social media; Social protests; Twitter
Journal:
Social Networks
Volume:
38
Number:
1
Pages:
16-27
ISSN:
0378-8733
DOI:
10.1016/j.socnet.2014.01.004
Hits: 5319

We use cookies to improve our website and your experience when using it. Cookies used for the essential operation of this site have already been set. To find out more about the cookies we use and how to delete them, see our privacy policy.

  I accept cookies from this site.
EU Cookie Directive Module Information