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Robust Communication Strategy for Federated Learning by Incorporating Self-Attention

机译:通过纳入自我关注,强大的沟通策略进行联合学习

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Federated learning is an emerging machine learning setting, which can train a shared model on large amounts of decentralized data while protecting data privacy. However, the communication cost of federated learning is heavy, especially for mobile devices with higher latency and lower throughput. Although several algorithms have been proposed to reduce the communication cost, they are extremely sensitive to data distribution, even inapplicable to the real client Non-IID data. In this paper, we propose an effective communication strategy for federated learning called FedSAA, which increases the testing performance on Xon-IID data by introducing self-attention mechanism. Two major innovations of our paper are presented here. Firstly, we utilize self-attention mechanism to optimize both the server-to-client and the client-to-client parameter divergence during the model aggregation process so as to improve the model robustness for Non-IID data. Secondly, we adopt the sign compression operator to help data transmission between nodes. The experimental results demonstrate that the model accuracy of our communication-efficient strategy for federated learning with Non-IID data is superior to other communication-efficient algorithms.
机译:联合学习是一种新兴机器学习设置,可以在保护数据隐私的同时大量​​分散数据培训共享模型。然而,联合学习的通信成本很重,特别是对于具有更高延迟和较低吞吐量的移动设备。虽然已经提出了几种算法来降低通信成本,但它们对数据分布非常敏感,甚至可以不适用于真实客户端非IID数据。在本文中,我们提出了一种叫做FEDSAA的联合学习的有效沟通策略,通过引入自我关注机制来提高XON IID数据的测试性能。我们纸张的两项主要创新在这里展示。首先,我们利用自我关注机制在模型聚合过程中优化服务器到客户端和客户端到客户端参数发散,以便提高非IID数据的模型稳健性。其次,我们采用标志压缩运营商来帮助节点之间的数据传输。实验结果表明,通过非IID数据联合学习的通信技术的模型准确性优于其他通信有效的算法。

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