Recommendation algorithms play an increasingly central role in our information ecosystem. Yet, so far, they are mostly designed, parameterized and updated unilaterally by private groups or governmental authorities, based on insecure data from increasingly many fake accounts. In this paper, we present an end-to-end permissionless collaborative algorithmic governance pipeline with security guarantees, which is deployed on the open-source platform https://tournesol.app. Our pipeline has essentially four steps. First, voting rights are assigned to the contributors, based on Sybil-resilient email domains and on a novel secure trust propagation algorithm. Second, a generalized Bradley-Terry model turns contributors' pairwise alternative comparisons into scores. Third, contributors' scores are collaboratively scaled, by an adaptation of the robust sparse voting solution Mehestan. Finally, scaled scores are post-processed and securely aggregated into human-readable global scores, which are used for recommendation and display. We believe that our pipeline lays an appealing foundation for any collaborative, effective, scalable, fair, interpretable and secure algorithmic governance.
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