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Personalized Collaborative Learning with Affinity-Based Variance Reduction

Machine Learning 2026-03-11 v3 Machine Learning Multiagent Systems Systems and Control Systems and Control

Abstract

Multi-agent learning faces a fundamental tension: leveraging distributed collaboration without sacrificing the personalization needed for diverse agents. This tension intensifies when aiming for full personalization while adapting to unknown heterogeneity levels -- gaining collaborative speedup when agents are similar, without performance degradation when they are different. Embracing the challenge, we propose personalized collaborative learning (PCL), a novel framework for heterogeneous agents to collaboratively learn personalized solutions with seamless adaptivity. Through carefully designed bias correction and importance correction mechanisms, our method AffPCL robustly handles both environment and objective heterogeneity. We prove that AffPCL reduces sample complexity over independent learning by a factor of max{n1,δ}\max\{n^{-1}, \delta\}, where nn is the number of agents and δ[0,1]\delta\in[0,1] measures their heterogeneity. This affinity-based acceleration automatically interpolates between the linear speedup of federated learning in homogeneous settings and the baseline of independent learning, without requiring prior knowledge of the system. Our analysis further reveals that an agent may obtain linear speedup even by collaborating with arbitrarily dissimilar agents, unveiling new insights into personalization and collaboration in the high heterogeneity regime.

Keywords

Cite

@article{arxiv.2510.16232,
  title  = {Personalized Collaborative Learning with Affinity-Based Variance Reduction},
  author = {Chenyu Zhang and Navid Azizan},
  journal= {arXiv preprint arXiv:2510.16232},
  year   = {2026}
}

Comments

Published as a conference paper at ICLR 2026

R2 v1 2026-07-01T06:44:24.570Z