English

DeRelayL: Sustainable Decentralized Relay Learning

Machine Learning 2026-05-06 v1 Artificial Intelligence

Abstract

In the era of big data, large-scale machine learning models have revolutionized various fields, driving significant advancements. However, large-scale model training demands high financial and computational resources, which are only affordable by a few technological giants and well-funded institutions. In this case, common users like mobile users, the real creators of valuable data, are often excluded from fully benefiting due to the barriers, while the current methods for accessing large-scale models either limit user ownership or lack sustainability. This growing gap highlights the urgent need for a collaborative model training approach, allowing common users to train and share models. However, existing collaborative model training paradigms, especially federated learning (FL), primarily focus on data privacy and group-based model aggregation. To this end, this paper intends to address this issue by proposing a novel training paradigm named decentralized relay learning (DeRelayL), a sustainable learning system where permissionless participants can contribute to model training in a relay-like manner and share the model. In detail, this paper presents the architecture and workflow of DeRelayL, designs incentive mechanisms to ensure sustainability, and conducts theoretical analysis and numerical simulations to demonstrate its effectiveness.

Keywords

Cite

@article{arxiv.2605.02935,
  title  = {DeRelayL: Sustainable Decentralized Relay Learning},
  author = {Haihan Duan and Tengfei Ma and Yuyang Qin and Runhao Zeng and Wei Cai and Victor C. M. Leung and Xiping Hu},
  journal= {arXiv preprint arXiv:2605.02935},
  year   = {2026}
}

Comments

24 pages, 4 figures, Published in IEEE Transaction on Mobile Computing

R2 v1 2026-07-01T12:49:06.122Z