A Novel Framework for Data-Sharing Incentive Evaluation Based on
Federated Learning
Sultan Alkhliwi
Northern Border University College of Science
Corresponding Author:salkhliwi@nbu.edu.sa
Author ProfileAbstract
The incentive mechanism in federated learning is a critical area for
research. Establishing a fair system to incentivise data owners to share
useful data is required to encourage all data owners to actively
contribute their data for model training. An effective incentive system
allows all participants to efficiently train models continuously,
leading to improved accuracy of the final trained federated model. This
paper introduces a novel algorithm for optimising the incentive
mechanism. First, clients with high-quality data are able to participate
in training based on their reputation value. Next, to improve the
effectiveness of local training and address the issue of performance
disparity among clients, the client entrusts the high-performance fog
node with the training of local data by auctioning local training
assignments to it. Finally, malicious clients are eliminated from the
local gradient by the global gradient aggregation algorithm. Simulation
results indicate that the proposed algorithm performs more effectively
than existing algorithms.