Said, A, Bowman, TD, Abbasi, RA, Aljohani, NR, Hassan, SU and Nawaz, R ORCID: https://orcid.org/0000-0001-9588-0052 (2019) Mining network-level properties of Twitter altmetrics data. Scientometrics, 120 (1). pp. 217-235. ISSN 0138-9130
|
Accepted Version
Available under License In Copyright. Download (2MB) | Preview |
Abstract
© 2019, Akadémiai Kiadó, Budapest, Hungary. Social networking sites play a significant role in altmetrics. While 90% of all altmetric mentions come from Twitter, the known microscopic and macroscopic properties of Twitter altmetrics data are limited. In this study, we present a large-scale analysis of Twitter altmetrics data using social network analysis techniques on the ‘mention’ network of Twitter users. Exploiting the network-level properties of over 1.4 million tweets, corresponding to 77,757 scholarly articles, this study focuses on the following aspects of Twitter altmetrics data: (a) the influence of organizational accounts; (b) the formation of disciplinary communities; (c) the cross-disciplinary interaction among Twitter users; (d) the network motifs of influential Twitter users; and (e) testing the small-world property. The results show that Twitter-based social media communities have unique characteristics, which may affect social media usage counts either directly or indirectly. Therefore, instead of treating altmetrics data as a black box, the underlying social media networks, which may either inflate or deflate social media usage counts, need further scrutiny.
Impact and Reach
Statistics
Additional statistics for this dataset are available via IRStats2.