LGDCSPOct 22, 2021

Federated Learning over Wireless IoT Networks with Optimized Communication and Resources

arXiv:2110.11775v1130 citations
Originality Incremental advance
AI Analysis

This work addresses communication bottlenecks for federated learning in resource-constrained wireless IoT networks, representing an incremental improvement over existing methods.

The paper tackles the problem of communication inefficiency and resource constraints in federated learning over wireless IoT networks by proposing a jointly optimized client scheduling and resource allocation framework, which achieves a strong linear convergence rate and substantially boosts both communication efficiency and learning performance compared to a baseline approach.

To leverage massive distributed data and computation resources, machine learning in the network edge is considered to be a promising technique especially for large-scale model training. Federated learning (FL), as a paradigm of collaborative learning techniques, has obtained increasing research attention with the benefits of communication efficiency and improved data privacy. Due to the lossy communication channels and limited communication resources (e.g., bandwidth and power), it is of interest to investigate fast responding and accurate FL schemes over wireless systems. Hence, we investigate the problem of jointly optimized communication efficiency and resources for FL over wireless Internet of things (IoT) networks. To reduce complexity, we divide the overall optimization problem into two sub-problems, i.e., the client scheduling problem and the resource allocation problem. To reduce the communication costs for FL in wireless IoT networks, a new client scheduling policy is proposed by reusing stale local model parameters. To maximize successful information exchange over networks, a Lagrange multiplier method is first leveraged by decoupling variables including power variables, bandwidth variables and transmission indicators. Then a linear-search based power and bandwidth allocation method is developed. Given appropriate hyper-parameters, we show that the proposed communication-efficient federated learning (CEFL) framework converges at a strong linear rate. Through extensive experiments, it is revealed that the proposed CEFL framework substantially boosts both the communication efficiency and learning performance of both training loss and test accuracy for FL over wireless IoT networks compared to a basic FL approach with uniform resource allocation.

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