Twitter-based analysis of the dynamics of collective attention to political parties
Young-Ho Eom, Michelangelo Puliga, Jasmina Smailovi\'c, Igor, Mozeti\v{c}, Guido Caldarelli

TL;DR
This study analyzes social media data to understand how collective attention to political parties fluctuates and predicts election outcomes, revealing that tweet volume follows a log-normal distribution and can be modeled as a geometric Brownian motion.
Contribution
It demonstrates that tweet volume dynamics follow a log-normal distribution and can be modeled as a geometric Brownian motion, providing insights into predicting election success.
Findings
Tweet volume follows a log-normal distribution.
Short-term autocorrelation exists in tweet volume.
Optimal averaging window improves prediction accuracy.
Abstract
Large-scale data from social media have a significant potential to describe complex phenomena in real world and to anticipate collective behaviors such as information spreading and social trends. One specific case of study is represented by the collective attention to the action of political parties. Not surprisingly, researchers and stakeholders tried to correlate parties' presence on social media with their performances in elections. Despite the many efforts, results are still inconclusive since this kind of data is often very noisy and significant signals could be covered by (largely unknown) statistical fluctuations. In this paper we consider the number of tweets (tweet volume) of a party as a proxy of collective attention to the party, identify the dynamics of the volume, and show that this quantity has some information on the elections outcome. We find that the distribution of the…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
