海报:利用数据异构提高联邦学习的性能和可靠性

Yuanli Wang, Dhruv Kumar, A. Chandra
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引用次数: 2

摘要

联邦学习[1]使分布式设备能够一起学习共享的机器学习模型,而无需上传他们的私有训练数据。它最近受到了极大的关注,并已用于移动应用,如搜索建议[2]和目标检测[3]。联邦学习不同于分布式机器学习,原因如下:1)系统异构性:联邦学习通常在具有高度动态和异构网络、计算和电源可用性的设备上执行。2)数据异质性(或统计异质性):数据由不同用户在不同设备上产生,因此可能具有不同的统计分布(非iid)。
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Poster: Exploiting Data Heterogeneity for Performance and Reliability in Federated Learning
Federated Learning [1] enables distributed devices to learn a shared machine learning model together, without uploading their private training data. It has received significant attention recently and has been used in mobile applications such as search suggestion [2] and object detection [3]. Federated Learning is different from distributed machine learning due to the following reasons: 1) System heterogeneity: federated learning is usually performed on devices having highly dynamic and heterogeneous network, compute, and power availability. 2) Data heterogeneity (or statistical heterogeneity): data is produced by different users on different devices, and therefore may have different statistical distribution (non-IID).
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