Modelling the spillover from online engagement to offline protest: stochastic dynamics and mean-field approximations on networks
Modelling the spillover from online engagement to offline protest: stochastic dynamics and mean-field approximations on networks
Social media is transforming various aspects of offline life, from everyday decisions such as dining choices to the progression of conflicts. In this study, we propose a coupled modelling framework with an online social network layer to analyse how engagement on a specific topic spills over into offline protest activities. We develop a stochastic model and derive several mean-field models of varying complexity. These models allow us to estimate the reproductive number and anticipate when surges in activity are likely to occur. A key factor is the transmission rate between the online and offline domains; for offline outbursts to emerge, this rate must fall within a critical range, neither too low nor too high. Additionally, using synthetic networks, we examine how network structure influences the accuracy of these approximations. Our findings indicate that low-density networks need more complex approximations, whereas simpler models can effectively represent higher-density networks. When tested on two real-world networks, however, increased complexity did not enhance accuracy.
Moyi Tian、P. Jeffrey Brantingham、Nancy Rodríguez
计算技术、计算机技术
Moyi Tian,P. Jeffrey Brantingham,Nancy Rodríguez.Modelling the spillover from online engagement to offline protest: stochastic dynamics and mean-field approximations on networks[EB/OL].(2025-07-18)[2025-08-10].https://arxiv.org/abs/2507.13310.点此复制
评论