Global Convergence Guarantees for Federated Policy Gradient Methods with Adversaries

Ganesh, Swetha, Chen, Jiayu, Thoppe, Gugan, Aggarwal, Vaneet

arXiv.org Artificial Intelligence 

Federated Reinforcement Learning (FRL) allows multiple agents to collaboratively build a decision making policy without sharing raw trajectories. However, if a small fraction of these agents are adversarial, it can lead to catastrophic results. We propose a policy gradient based approach that is robust to adversarial agents which can send arbitrary values to the server. Under this setting, our results form the first global convergence guarantees with general parametrization.

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