Social networks can be thought of as noisy sensor networks mapping real world information to the web. Owing to the extensive body of literature in sensor network analysis, this work sought to apply several novel and traditional methods in sensor network analysis for the purposes of efficiently interrogating social media data streams from raw data. We carefully revisit our definition of a social media signal from previous work both in terms of time-varying features within the data and the networked nature of the medium. Further, we detail our analysis of global patterns in Twitter over the months of November 2013 and June 2014, detect and categorize events, and illustrate how these analyses can be used to inform graph-based models of Twitter, namely using a recent network influence model called PhySense: similar to PageRank but tuned to behavioral analysis by leveraging a sociologically inspired probabilistic model. We ultimately identify forms of information dissemination via analysis of time series and dynamic graph spectra and corroborate these findings through manual investigation of the data as a requisite step in modeling the diffusion process with PhySense. We hope to sufficiently characterize global behavior in a medium such as Twitter as a means of learning global model parameters one may use to predict or simulate behavior on a large scale. We have made our time series and dynamic graph analytical code available via a GitHub repository https://github.com/cpatdowling/salsa and our data are available upon request.
Revised: December 2, 2016 |
Published: July 27, 2015
Citation
Dowling C.P., J.J. Harrison, A.V. Sathanur, L.H. Sego, and C.D. Corley. 2015.Social Sensor Analytics: Making Sense of Network Models in Social Media. In IEEE International Conference on Intelligence and Security Informatics (ISI 2015), May 27-29, 2015, Baltimore, Maryland, 144-147. Piscataway, New Jersey:IEEE.PNNL-SA-106142.doi:10.1109/ISI.2015.7165956