FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios
Along with the increasing popularity of Deep Learning (DL) techniques, more and more Artificial Intelligence of Things (AIoT) systems are adopting federated learning (FL) to enable privacy-aware collaborative learning among AIoT devices. However, due to the inherent data and device heterogeneity iss...
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sg-smu-ink.sis_research-108172024-12-24T03:45:03Z FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios CHEN, Zekai JIA, Chentao HU, Ming XIE, Xiaofei LI, Anran CHEN, Mingsong Along with the increasing popularity of Deep Learning (DL) techniques, more and more Artificial Intelligence of Things (AIoT) systems are adopting federated learning (FL) to enable privacy-aware collaborative learning among AIoT devices. However, due to the inherent data and device heterogeneity issues, existing FL-based AIoT systems suffer from the model selection problem. Although various heterogeneous FL methods have been investigated to enable collaborative training among heterogeneous models, there is still a lack of i) wise heterogeneous model generation methods for devices, ii) consideration of uncertain factors, and iii) performance guarantee for large models, thus strongly limiting the overall FL performance. To address the above issues, this paper introduces a novel heterogeneous FL framework named FlexFL. By adopting our Average Percentage of Zeros (APoZ)-guided flexible pruning strategy, FlexFL can effectively derive best-fit models for heterogeneous devices to explore their greatest potential. Meanwhile, our proposed adaptive local pruning strategy allows AIoT devices to prune their received models according to their varying resources within uncertain scenarios. Moreover, based on self-knowledge distillation, FlexFL can enhance the inference performance of large models by learning knowledge from small models. Comprehensive experimental results show that, compared to state-of-the-art heterogeneous FL methods, FlexFL can significantly improve the overall inference accuracy by up to 14.24%. 2024-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/9817 info:doi/10.1109/TCAD.2024.3444695 https://ink.library.smu.edu.sg/context/sis_research/article/10817/viewcontent/2407.12729v1.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University AIoT APoZ Heterogeneous federated learning Model pruning Uncertain scenario Artificial Intelligence and Robotics Computer Sciences |
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AIoT APoZ Heterogeneous federated learning Model pruning Uncertain scenario Artificial Intelligence and Robotics Computer Sciences CHEN, Zekai JIA, Chentao HU, Ming XIE, Xiaofei LI, Anran CHEN, Mingsong FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios |
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Along with the increasing popularity of Deep Learning (DL) techniques, more and more Artificial Intelligence of Things (AIoT) systems are adopting federated learning (FL) to enable privacy-aware collaborative learning among AIoT devices. However, due to the inherent data and device heterogeneity issues, existing FL-based AIoT systems suffer from the model selection problem. Although various heterogeneous FL methods have been investigated to enable collaborative training among heterogeneous models, there is still a lack of i) wise heterogeneous model generation methods for devices, ii) consideration of uncertain factors, and iii) performance guarantee for large models, thus strongly limiting the overall FL performance. To address the above issues, this paper introduces a novel heterogeneous FL framework named FlexFL. By adopting our Average Percentage of Zeros (APoZ)-guided flexible pruning strategy, FlexFL can effectively derive best-fit models for heterogeneous devices to explore their greatest potential. Meanwhile, our proposed adaptive local pruning strategy allows AIoT devices to prune their received models according to their varying resources within uncertain scenarios. Moreover, based on self-knowledge distillation, FlexFL can enhance the inference performance of large models by learning knowledge from small models. Comprehensive experimental results show that, compared to state-of-the-art heterogeneous FL methods, FlexFL can significantly improve the overall inference accuracy by up to 14.24%. |
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CHEN, Zekai JIA, Chentao HU, Ming XIE, Xiaofei LI, Anran CHEN, Mingsong |
author_facet |
CHEN, Zekai JIA, Chentao HU, Ming XIE, Xiaofei LI, Anran CHEN, Mingsong |
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CHEN, Zekai |
title |
FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios |
title_short |
FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios |
title_full |
FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios |
title_fullStr |
FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios |
title_full_unstemmed |
FlexFL: Heterogeneous federated learning via APoZ-guided flexible pruning in uncertain scenarios |
title_sort |
flexfl: heterogeneous federated learning via apoz-guided flexible pruning in uncertain scenarios |
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Institutional Knowledge at Singapore Management University |
publishDate |
2024 |
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https://ink.library.smu.edu.sg/sis_research/9817 https://ink.library.smu.edu.sg/context/sis_research/article/10817/viewcontent/2407.12729v1.pdf |
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