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FLOSS: Federated Learning with Opt-Out and Straggler Support
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本文提出FLOSS系统,旨在缓解联邦学习中因用户退出和数据缺失导致的模型性能下降问题,并通过模拟实验验证了其有效性。

arXiv:2507.23115v1 Announce Type: cross Abstract: Previous work on data privacy in federated learning systems focuses on privacy-preserving operations for data from users who have agreed to share their data for training. However, modern data privacy agreements also empower users to use the system while opting out of sharing their data as desired. When combined with stragglers that arise from heterogeneous device capabilities, the result is missing data from a variety of sources that introduces bias and degrades model performance. In this paper, we present FLOSS, a system that mitigates the impacts of such missing data on federated learning in the presence of stragglers and user opt-out, and empirically demonstrate its performance in simulations.

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联邦学习 数据隐私 FLOSS系统 模型性能 用户退出
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