Optimized Local Updates in Federated Learning via Reinforcement Learning
Ali Murad, Bo Hui, Wei-Shinn Ku

TL;DR
This paper introduces a Deep Reinforcement Learning-based framework to optimize local data usage in Federated Learning, improving client performance while preserving privacy and addressing non-IID data challenges.
Contribution
It proposes a novel DRL agent that dynamically selects the optimal local training data subset in FL, enhancing performance without oversharing information.
Findings
Improved model accuracy on multiple benchmark datasets.
Effective mitigation of non-IID data effects in FL.
Enhanced client performance through optimized local training.
Abstract
Federated Learning (FL) is a distributed framework for collaborative model training over large-scale distributed data, enabling higher performance while maintaining client data privacy. However, the nature of model aggregation at the centralized server can result in a performance drop in the presence of non-IID data across different clients. We remark that training a client locally on more data than necessary does not benefit the overall performance of all clients. In this paper, we devise a novel framework that leverages a Deep Reinforcement Learning (DRL) agent to select an optimized amount of data necessary to train a client model without oversharing information with the server. Starting without awareness of the client's performance, the DRL agent utilizes the change in training loss as a reward signal and learns to optimize the amount of training data necessary for improving the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Domain Adaptation and Few-Shot Learning · Mobile Crowdsensing and Crowdsourcing
