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May, 2024
FedHPL:高效异构联邦学习中的提示调整和逻辑蒸馏
FedHPL: Efficient Heterogeneous Federated Learning with Prompt Tuning and Logit Distillation
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Yuting Ma, Lechao Cheng, Yaxiong Wang, Zhun Zhong, Xiaohua Xu...
TL;DR
基于Prompt调优和Logit蒸馏的参数高效统一的异构联邦学习框架FedHPL能够有效应对异构挑战,改善模型性能和加速训练,在多种数据集和模型设置下,性能优于当前最先进的联邦学习方法。
Abstract
federated learning
(FL) is a popular
privacy-preserving paradigm
that enables distributed clients to collaboratively train models with a central server while keeping raw data locally. In practice, distinct model
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