On Gossip Algorithms for Machine Learning with Pairwise Objectives
arXiv cs.LG / 3/26/2026
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Key Points
- The paper studies gossip-based machine learning methods for scenarios common in IoT networks where data are distributed and constrained by storage, computation, and communication limits.
- Unlike most prior work that assumes objectives based on simple averages of individual observations, it focuses on pairwise objectives modeled as degree-two U-statistics.
- The authors target motivating tasks such as similarity learning, ranking, and clustering, and revisit gossip algorithms tailored to these pairwise U-statistic objectives.
- A comprehensive theoretical convergence framework is developed, including refined upper and lower bounds to explain when the methods succeed.
- The analysis identifies specific graph properties that most strongly determine efficiency, highlighting how network topology affects performance.
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