Breaking the Illusion of Artificial Consensus: Clone-Robust Weighting for Arbitrary Metric Spaces
Damien Berriaud, Roger Wattenhofer

TL;DR
This paper introduces clone-robust weighting functions for arbitrary metric spaces to mitigate the influence of coordinated inauthentic behavior in media, ensuring fair influence distribution despite duplications.
Contribution
It provides a general, topology-independent construction of clone-robust weights, introduces sharing coefficients for interpretability, and explores graph-based and information-theoretic approaches.
Findings
Clone-robust weights are invariant under duplication.
The framework applies to arbitrary metric spaces.
New methods for interpretability and comparison of weighting functions.
Abstract
Independent media are central to democratic decision-making, yet recent technological developments, such as social media, pseudonymous identities, and generative AI, have made them more vulnerable to coordinated influence campaigns--usually referred to as Coordinated Inauthentic Behavior. By automatically generating large numbers of similar messages and news reports, such campaigns create an illusion of widespread support, and exploit the tendency of human observers and aggregation mechanisms alike to treat frequency as evidence of credibility or consensus. Clone-robust weighting functions offer a solution to this problem by assigning influence in a way that is insensitive to arbitrary duplication or near-duplication, as measured by a metric. This axiomatic framework rests on three principles: symmetry (equivalent elements are treated equally), continuity (weights vary smoothly under…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques · Data Visualization and Analytics
