FEDSLD:用于医学图像分类的具有共享标签分布的联合学习。

Jun Luo, Shandong Wu
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摘要

联合学习(FL)能够协同训练多个医疗中心的联合模型,同时出于隐私考虑保持数据的分散。然而,联邦优化经常受到医疗中心之间数据分布的异质性的影响。在这项工作中,我们提出了用于分类任务的共享标签分布联合学习(FedSLD),这是一种在优化过程中通过了解客户的标签分布来调整每个数据样本对局部目标的贡献的方法,减轻了数据异质性带来的不稳定性。我们在四个公开可用的图像数据集上进行了广泛的实验,这些数据集具有不同类型的非IID数据分布。我们的结果表明,与领先的FL优化算法相比,FedSLD实现了更好的收敛性能,将测试精度提高了5.50个百分点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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FEDSLD: FEDERATED LEARNING WITH SHARED LABEL DISTRIBUTION FOR MEDICAL IMAGE CLASSIFICATION.

Federated learning (FL) enables collaboratively training a joint model for multiple medical centers, while keeping the data decentralized due to privacy concerns. However, federated optimizations often suffer from the heterogeneity of the data distribution across medical centers. In this work, we propose Federated Learning with Shared Label Distribution (FedSLD) for classification tasks, a method that adjusts the contribution of each data sample to the local objective during optimization via knowledge of clients' label distribution, mitigating the instability brought by data heterogeneity. We conduct extensive experiments on four publicly available image datasets with different types of non-IID data distributions. Our results show that FedSLD achieves better convergence performance than the compared leading FL optimization algorithms, increasing the test accuracy by up to 5.50 percentage points.

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