FESS-GDA, a new algorithm that utilizes smoothing techniques, can be uniformly applied to solve several classes of federated nonconvex minimax problems and achieve new or better analytical convergence results.
Our AdaFGDA algorithm efficiently addresses distributed non-convex minimax optimization problems by incorporating adaptive learning rates, achieving lower gradient and communication complexities simultaneously.