English

Self-Interested Agents in Collaborative Machine Learning: An Incentivized Adaptive Data-Centric Framework

Machine Learning 2025-02-07 v3

Abstract

We propose a framework for adaptive data-centric collaborative machine learning among self-interested agents, coordinated by an arbiter. Designed to handle the incremental nature of real-world data, the framework operates in an online manner: at each time step, the arbiter collects a batch of data from agents, trains a machine learning model, and provides each agent with a distinct model reflecting its data contributions. This setup establishes a feedback loop where shared data influence model updates, and the resulting models guide future data-sharing policies. Agents evaluate and partition their data, selecting a partition to share using a stochastic parameterized policy, learned via policy gradient methods to optimize the utility of the received model as defined by agent-specific evaluation functions. On the arbiter side, the expected loss function over the true data distribution is optimized, incorporating agent-specific weights to account for distributional differences arising from diverse sources and selective sharing. A bilevel optimization algorithm jointly learns the model parameters and agent-specific weights. Mean-zero noise, computed using a distortion function that adjusts these agent-specific weights, is introduced to generate distinct agent-specific models, promoting valuable data sharing without requiring separate training. Our framework is underpinned by non-asymptotic analyses, ensuring convergence of the agent-side policy optimization to an approximate stationary point of the evaluation functions and convergence of the arbiter-side optimization to an approximate stationary point of the expected loss function.

Keywords

Cite

@article{arxiv.2412.06597,
  title  = {Self-Interested Agents in Collaborative Machine Learning: An Incentivized Adaptive Data-Centric Framework},
  author = {Nithia Vijayan and Bryan Kian Hsiang Low},
  journal= {arXiv preprint arXiv:2412.06597},
  year   = {2025}
}
R2 v1 2026-06-28T20:28:03.182Z