Learnable Sparse Customization in Heterogeneous Edge Computing
Jingjing Xue, Sheng Sun, Min Liu, Yuwei Wang, Zhuotao Liu, Jingyuan, Wang

TL;DR
This paper introduces FedLPS, a novel federated learning method that adaptively learns personalized sparse models to address heterogeneity in edge devices and data, significantly improving accuracy and efficiency.
Contribution
FedLPS is the first approach to learn importance-based sparse patterns and adaptive ratios for personalized federated learning on heterogeneous edge devices.
Findings
Outperforms existing methods in accuracy by up to 59.34%.
Reduces training time by over 68.80%.
Effectively handles non-IID data and device heterogeneity.
Abstract
To effectively manage and utilize massive distributed data at the network edge, Federated Learning (FL) has emerged as a promising edge computing paradigm across data silos. However, FL still faces two challenges: system heterogeneity (i.e., the diversity of hardware resources across edge devices) and statistical heterogeneity (i.e., non-IID data). Although sparsification can extract diverse submodels for diverse clients, most sparse FL works either simply assign submodels with artificially-given rigid rules or prune partial parameters using heuristic strategies, resulting in inflexible sparsification and poor performance. In this work, we propose Learnable Personalized Sparsification for heterogeneous Federated learning (FedLPS), which achieves the learnable customization of heterogeneous sparse models with importance-associated patterns and adaptive ratios to simultaneously tackle…
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Taxonomy
TopicsInnovation in Digital Healthcare Systems · Advanced Computing and Algorithms · Multimedia Communication and Technology
