FL-GUARD introduces a dynamic framework for detecting and recovering from Negative Federated Learning in real-time, ensuring improved performance and adaptability in federated learning systems.
FL-GUARD introduces a dynamic solution for detecting and recovering from Negative Federated Learning in real-time, outperforming previous approaches.
The author introduces FL-GUARD, a dynamic solution for tackling Negative Federated Learning in run-time, ensuring recovery only when necessary. The framework outperforms previous approaches by detecting NFL quickly and efficiently.