StatMix: Data augmentation method that relies on image statistics in federated learning

D. Lewy, Jacek Ma'ndziuk, M. Ganzha, M. Paprzycki
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引用次数: 2

Abstract

Availability of large amount of annotated data is one of the pillars of deep learning success. Although numerous big datasets have been made available for research, this is often not the case in real life applications (e.g. companies are not able to share data due to GDPR or concerns related to intellectual property rights protection). Federated learning (FL) is a potential solution to this problem, as it enables training a global model on data scattered across multiple nodes, without sharing local data itself. However, even FL methods pose a threat to data privacy, if not handled properly. Therefore, we propose StatMix, an augmentation approach that uses image statistics, to improve results of FL scenario(s). StatMix is empirically tested on CIFAR-10 and CIFAR-100, using two neural network architectures. In all FL experiments, application of StatMix improves the average accuracy, compared to the baseline training (with no use of StatMix). Some improvement can also be observed in non-FL setups.
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StatMix:在联邦学习中依赖图像统计的数据增强方法
大量注释数据的可用性是深度学习成功的支柱之一。尽管已经有许多大数据集可供研究,但在现实生活应用中往往不是这样(例如,由于GDPR或与知识产权保护有关的问题,公司无法共享数据)。联邦学习(FL)是这个问题的潜在解决方案,因为它支持在分散在多个节点上的数据上训练全局模型,而无需共享本地数据本身。然而,如果处理不当,即使是FL方法也会对数据隐私构成威胁。因此,我们提出了StatMix,一种使用图像统计的增强方法,以改善FL场景的结果。StatMix使用两种神经网络架构在CIFAR-10和CIFAR-100上进行了实证测试。在所有FL实验中,与基线训练(不使用StatMix)相比,使用StatMix可以提高平均准确率。在非fl设置中也可以观察到一些改进。
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