DualGFL: Federated Learning with a Dual-Level Coalition-Auction Game
Document Type
Conference Proceeding
Publication Date
4-11-2025
Abstract
Despite some promising results in federated learning using game-theoretical methods, most existing studies mainly employ a one-level game in either a cooperative or competitive environment, failing to capture the complex dynamics among participants in practice. To address this issue, we propose DualGFL, a novel Federated Learning framework with a Dual-level Game in cooperative-competitive environments. DualGFL includes a lower-level hedonic game where clients form coalitions and an upper-level multi-attribute auction game where coalitions bid for training participation. At the lower-level DualGFL, we introduce a new auction-aware utility function and propose a Pareto-optimal partitioning algorithm to find a Pareto-optimal partition based on clients’ preference profiles. At the upper-level DualGFL, we formulate a multi-attribute auction game with resource constraints and derive equilibrium bids to maximize coalitions’ winning probabilities and profits. A greedy algorithm is proposed to maximize the utility of the central server. Extensive experiments on real-world datasets demonstrate DualGFL’s effectiveness in improving both server utility and client utility.
Publication Source (Journal or Book title)
Proceedings of the Aaai Conference on Artificial Intelligence
First Page
15904
Last Page
15912
Recommended Citation
Chen, X. (2025). DualGFL: Federated Learning with a Dual-Level Coalition-Auction Game. Proceedings of the Aaai Conference on Artificial Intelligence, 39 (15), 15904-15912. https://doi.org/10.1609/aaai.v39i15.33746