Ratkiewicz, Jacob
Political Polarization on Twitter
Conover, Michael D. (Indiana University) | Ratkiewicz, Jacob (Indiana University) | Francisco, Matthew (Indiana University) | Goncalves, Bruno (Indiana University) | Menczer, Filippo (Indiana University) | Flammini, Alessandro (Indiana University)
In this study we investigate how social media shape the networked public sphere and facilitate communication between communities with different political orientations. We examine two networks of political communication on Twitter, comprised of more than 250,000 tweets from the six weeks leading up to the 2010 U.S. congressional midterm elections. Using a combination of network clustering algorithms and manually-annotated data we demonstrate that the network of political retweets exhibits a highly segregated partisan structure, with extremely limited connectivity between left- and right-leaning users. Surprisingly this is not the case for the user-to-user mention network, which is dominated by a single politically heterogeneous cluster of users in which ideologically-opposed individuals interact at a much higher rate compared to the network of retweets. To explain the distinct topologies of the retweet and mention networks we conjecture that politically motivated individuals provoke interaction by injecting partisan content into information streams whose primary audience consists of ideologically-opposed users. We conclude with statistical evidence in support of this hypothesis.
Detecting and Tracking Political Abuse in Social Media
Ratkiewicz, Jacob (Indiana University) | Conover, Michael D. (Indiana University) | Meiss, Mark (Indiana University) | Goncalves, Bruno (Indiana University) | Flammini, Alessandro (Indiana University) | Menczer, Filippo Menczer (Indiana University)
We study astroturf political campaigns on microblogging platforms: politically-motivated individuals and organizations that use multiple centrally-controlled accounts to create the appearance of widespread support for a candidate or opinion. We describe a machine learning framework that combines topological, content-based and crowdsourced features of information diffusion networks on Twitter to detect the early stages of viral spreading of political misinformation. We present promising preliminary results with better than 96% accuracy in the detection of astroturf content in the run-up to the 2010 U.S. midterm elections.