English

Modelling and Predicting Online Vaccination Views using Bow-tie Decomposition

Social and Information Networks 2024-02-22 v3

Abstract

Social media has become increasingly important in shaping public vaccination views, especially since the COVID-19 outbreak. This paper uses bow-tie structure to analyse a temporal dataset of directed online social networks that represent the information exchange among anti-vaccination, pro-vaccination, and neutral Facebook pages. Bow-tie structure decomposes a network into seven components, with two components "SCC" and "OUT" emphasised in this paper: SCC is the largest strongly connected component, acting as an "information magnifier", and OUT contains all nodes with a directed path from a node in SCC, acting as an "information creator". We consistently observe statistically significant bow-tie structures with different dominant components for each vaccination group over time. In particular, the anti-vaccination group has a large OUT, and the pro-vaccination group has a large SCC. We further investigate changes in opinions over time, as measured by fan count variations, using agent-based simulations and machine learning models. Across both methods, accounting for bow-tie decomposition better reflects information flow differences among vaccination groups and improves our opinion dynamics prediction results. The modelling frameworks we consider can be applied to any multi-stance temporal network and could form a basis for exploring opinion dynamics using bow-tie structure in a wide range of applications.

Cite

@article{arxiv.2401.06255,
  title  = {Modelling and Predicting Online Vaccination Views using Bow-tie Decomposition},
  author = {Yueting Han and Marya Bazzi and Paolo Turrini},
  journal= {arXiv preprint arXiv:2401.06255},
  year   = {2024}
}

Comments

SM update

R2 v1 2026-06-28T14:14:46.007Z