Efficient Core-selecting Incentive Mechanism for Data Sharing in Federated Learning
Mengda Ji, Genjiu Xu, Jianjun Ge, Mingqiang Li

TL;DR
This paper proposes an efficient, game-theoretic incentive mechanism for federated learning that encourages truthful data sharing and stable cooperation among participants, while significantly reducing computational costs.
Contribution
It introduces a novel core-selecting incentive mechanism using sampling approximation to address computational challenges in federated learning.
Findings
The mechanism effectively incentivizes high-quality data input.
It promotes stable cooperation among participants.
It reduces computational overhead compared to traditional methods.
Abstract
Federated learning is a distributed machine learning system that uses participants' data to train an improved global model. In federated learning, participants cooperatively train a global model, and they will receive the global model and payments. Rational participants try to maximize their individual utility, and they will not input their high-quality data truthfully unless they are provided with satisfactory payments based on their data quality. Furthermore, federated learning benefits from the cooperative contributions of participants. Accordingly, how to establish an incentive mechanism that both incentivizes inputting data truthfully and promotes stable cooperation has become an important issue to consider. In this paper, we introduce a data sharing game model for federated learning and employ game-theoretic approaches to design a core-selecting incentive mechanism by utilizing a…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Blockchain Technology Applications and Security
