Persistence in voting behavior: stronghold dynamics in elections
Toni P\'erez, Juan Fern\'andez-Gracia, Jose J. Ramasco, V\'ictor M., Egu\'iluz

TL;DR
This paper models voting behavior and stronghold persistence in elections using the SIRM model, which incorporates spatial, demographic, and social influence factors, and validates it against US presidential election data from 1980-2012.
Contribution
It introduces a quantitative framework for defining and analyzing political strongholds based on persistence, validated with real election data and simulations.
Findings
The SIRM model accurately reproduces vote-share fluctuations.
Stronghold durations decay exponentially over time.
Model results align well with actual electoral data.
Abstract
Influence among individuals is at the core of collective social phenomena such as the dissemination of ideas, beliefs or behaviors, social learning and the diffusion of innovations. Different mechanisms have been proposed to implement inter-agent influence in social models from the voter model, to majority rules, to the Granoveter model. Here we advance in this direction by confronting the recently introduced Social Influence and Recurrent Mobility (SIRM) model, that reproduces generic features of vote-shares at different geographical levels, with data in the US presidential elections. Our approach incorporates spatial and population diversity as inputs for the opinion dynamics while individuals' mobility provides a proxy for social context, and peer imitation accounts for social influence. The model captures the observed stationary background fluctuations in the vote-shares across…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Complex Systems and Time Series Analysis
