How to Quantify Polarization in Models of Opinion Dynamics
Christopher Musco, Indu Ramesh, Johan Ugander, R. Teal Witter

TL;DR
This paper proposes a new class of group-based polarization measures that better capture increasing societal polarization in opinion dynamics models, addressing limitations of variance-based metrics.
Contribution
It introduces and analyzes group-based polarization metrics that reflect non-monotonic and increasing polarization, supported by theoretical and empirical evidence.
Findings
Group-based measures can increase over time in simple models.
These measures better align with real-world perceptions of polarization.
The approach extends existing analytical tools to new polarization metrics.
Abstract
It is widely believed that society is becoming increasingly polarized around important issues, a dynamic that does not align with common mathematical models of opinion formation in social networks. In particular, measures of polarization based on opinion variance are known to decrease over time in frameworks such as the popular DeGroot model. Complementing recent work that seeks to resolve this apparent inconsistency by modifying opinion models, we instead resolve the inconsistency by proposing changes to how polarization is quantified. We present a natural class of group-based polarization measures that capture the extent to which opinions are clustered into distinct groups. Using theoretical arguments and empirical evidence, we show that these group-based measures display interesting, non-monotonic dynamics, even in the simple DeGroot model. In particular, for many natural social…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Social Media and Politics
