In the mood: the dynamics of collective sentiments on Twitter

Authored by Danica Vukadinovic Greetham, Nathaniel Charlton, Colin Singleton

Date Published: 2016

DOI: 10.1098/rsos.160162

Sponsors: UK Defence Science and Technology Labs

Platforms: VISONE

Model Documentation: Other Narrative Mathematical description

Model Code URLs: Model code not found

Abstract

We study the relationship between the sentiment levels of Twitter users and the evolving network structure that the users created by @-mentioning each other. We use a large dataset of tweets to which we apply three sentiment scoring algorithms, including the open source SENTISTRENGTH program. Specifically we make three contributions. Firstly, we find that people who have potentially the largest communication reach (according to a dynamic centrality measure) use sentiment differently than the average user: for example, they use positive sentiment more often and negative sentiment less often. Secondly, we find that when we follow structurally stable Twitter communities over a period of months, their sentiment levels are also stable, and sudden changes in community sentiment from one day to the next can in most cases be traced to external events affecting the community. Thirdly, based on our findings, we create and calibrate a simple agent-based model that is capable of reproducing measures of emotive response comparable with those obtained from our empirical dataset.
Tags
Social networks scale Emotional contagion Community structure