FIRMA: FIbonacci Ring Model Aggregation for Privacy-preserving Federated Learning

Abstract

Federated learning protocols face a structural trilemma: canonical server-based aggregation~mcmahan2017 creates a single point of failure and gradient inversion risk; decentralised ring-gossip alternatives~hu2019segmented expose classification heads to semi-honest peers via uninformed uniform weights; and personalised methods~collins2021exploiting reintroduce central aggregation. No existing protocol simultaneously achieves server-free operation, permanently private heads, ring topology, and principled asymmetric neighbour weighting. We propose FIRMA (FIbonacci Ring Model Aggregation), a family of three progressively enhanced federated learning protocols: 1) \ establishes the foundation: server-free ring aggregation with Fibonacci-weighted neighbour blending and permanently private classification heads. 2) \ augments this with accuracy-gated neighbour suppression, selectively down-weighting poorly-converged peers while preserving the Fibonacci directional bias. 3) , the full system, completes the family with a 2-opt ring permutation that maximises adjacent-client class diversity, global ring coverage via Kg= N/2 gossip passes, and cosine-annealed self-retention calibration. We establish a convergence rate bound and three supporting propositions governing normalisation, coverage, retention, and diversity optimality. Systematic experiments across 28 configurations -- four benchmarks crossed with seven heterogeneity regimes -- demonstrate that \ surpasses \ in all 12 label-skew configurations, with a peak advantage of +20.7\,pp on CIFAR-10 at K=1. Under Dirichlet heterogeneity, \ is the Pareto-dominant method among all server-free protocols, achieving the highest accuracy in 17 of 28 configurations.

0

Turn this paper into a full lesson

ArcXiv compiles a staged curriculum from this paper: 8-12 lessons across beginner → advanced, synthesised section guides, visuals, flashcards, a quiz, exercises, and on-demand deep dives per section. Grounded in the abstract, never invented.

Discussion (0)

Sign in to join the discussion.

Loading comments…