Litcius/Paper detail

FedPAGE: Pruning Adaptively Toward Global Efficiency of Heterogeneous Federated Learning

Guangmeng Zhou, Qi Li, Yang Liu, Yi Zhao, Qi Tan, Su Yao, Ke Xu

2023IEEE/ACM Transactions on Networking17 citationsDOI

Abstract

When workers are heterogeneous in computing and transmission capabilities, the global efficiency of federated learning suffers from the straggler issue, i.e., the slowest worker drags down the overall training process. We propose a novel and efficient federated learning framework named FedPAGE, where workers perform distributed pruning adaptively towards global efficiency, i.e., fast training and high accuracy. For fast training, we develop a pruning rate learning approach generating an adaptive pruning rate for each worker, making the overall update time approximate to the fastest worker’s update time, i.e., no stragglers. For high accuracy, we find that structural similarity between sub-models is essential to global model accuracy in the distributed pruning, and thus propose the CIG_X pruning scheme to ensure maximum similarity. Meanwhile, we adopt the sparse training and design model aggregating of different size sub-models to cope with distributed pruning. We prove the convergence of FedPAGE and demonstrate the effectiveness of FedPAGE on image classification and natural language inference tasks. Compared with the state-of-the-art, FedPAGE achieves higher accuracy with the same speedup ratio.

Topics & Concepts

Computer sciencePruningSpeedupInferenceMachine learningArtificial intelligenceConvergence (economics)Process (computing)Rate of convergenceSimilarity (geometry)Parallel computingKey (lock)Image (mathematics)BiologyEconomic growthAgronomyOperating systemEconomicsComputer securityDomain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsPrivacy-Preserving Technologies in Data