SIMar 12

Opinion Dynamics in Learning Systems

arXiv:2603.12137v115.1h-index: 20
Predicted impact top 20% in SI · last 90 daysOriginality Highly original
AI Analysis

This work addresses the problem of understanding emergent social dynamics in AI-driven platforms for researchers and practitioners, revealing performativity as a neglected factor in network theory.

The paper tackles the co-evolution of peer-to-peer opinion dynamics and performative effects in learning systems, showing that this interplay induces a novel equilibrium where standard predictive objectives drive networks toward consensus, unlike classical models that lead to disagreement.

We propose and analyze a unified framework that interleaves peer-to-peer opinion dynamics with performative effects of learning systems. While network theory studies how opinions evolve via social connections, and performative prediction examines how learning systems interplay with individuals' opinions, neither captures the emergent dynamics when these forces co-evolve. We model this interplay as a recursive feedback loop: a platform's predictions influence individual opinions, which then evolve through social interactions before forming the training data for the next platform model update. We demonstrate that this co-evolution induces a novel equilibrium that qualitatively differs from standard network equilibria. Specifically, we show that standard predictive objectives act as a ``homogenizing force" driving networks toward consensus even under conditions where classical opinion-dynamics models lead to disagreement. Further, we demonstrate how learning under partial observations creates spillover effects among individuals, even if individuals are not susceptible to peer-influence. Finally, we study a platform that systematically deviates from standard predictive objectives, and demonstrate how classical opinion-dynamics models underestimate the equilibrium response to node-level interventions. We complement our theoretical findings with semi-synthetic simulations on social network data. Combined, our results illuminate performativity as an important, so far neglected, qualifying factor in social networks.

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