Multidimensional Opinion Dynamics with Confirmation Bias: A Multi-Layer Framework
Abstract
We study multidimensional opinion dynamics under confirmation bias in social networks. Each agent holds a vector of correlated opinions across multiple topic layers. Peer interaction is modeled through a static, informationally symmetric social channel, while external information enters through a dynamic, informationally asymmetric source channel. Source influence is described by nonnegative state-dependent functions of agent--source opinion mismatch, which captures confirmation bias without hard thresholds. For general Lipschitz source-influence functions, we give sufficient conditions under which the dynamics are contractive and converge to a unique steady state independent of the initial condition. For affine confirmation-bias functions, we show that the steady state can be computed through a finite sign-consistency search and identify a regime in which it admits a closed form. For broader classes of bounded nonlinear source-influence functions, we derive explicit lower and upper bounds on the fixed point. Numerical examples and a study on a real-world adolescent lifestyle network illustrate the role of multidimensional coupling and show that source-design conclusions can change qualitatively when confirmation bias is ignored.
Cite
@article{arxiv.2603.21081,
title = {Multidimensional Opinion Dynamics with Confirmation Bias: A Multi-Layer Framework},
author = {M. Hossein Abedinzadeh and Emrah Akyol},
journal= {arXiv preprint arXiv:2603.21081},
year = {2026}
}
Comments
12 pages, 9 figures. Submitted to IEEE Transactions on Control of Network Systems (TCNS)