Towards Sparsified Federated Neuroimaging Models via Weight Pruning

Dimitris Stripelis, Umang Gupta, N. Dhinagar, G. V. Steeg, Paul M. Thompson, J. Ambite
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Abstract

Federated training of large deep neural networks can often be restrictive due to the increasing costs of communicating the updates with increasing model sizes. Various model pruning techniques have been designed in centralized settings to reduce inference times. Combining centralized pruning techniques with federated training seems intuitive for reducing communication costs -- by pruning the model parameters right before the communication step. Moreover, such a progressive model pruning approach during training can also reduce training times/costs. To this end, we propose FedSparsify, which performs model pruning during federated training. In our experiments in centralized and federated settings on the brain age prediction task (estimating a person's age from their brain MRI), we demonstrate that models can be pruned up to 95% sparsity without affecting performance even in challenging federated learning environments with highly heterogeneous data distributions. One surprising benefit of model pruning is improved model privacy. We demonstrate that models with high sparsity are less susceptible to membership inference attacks, a type of privacy attack.
基于权值修剪的稀疏联邦神经成像模型
大型深度神经网络的联合训练通常会受到限制,因为随着模型大小的增加,更新的通信成本不断增加。在集中设置中设计了各种模型修剪技术来减少推理时间。将集中修剪技术与联邦训练相结合,似乎可以直观地降低通信成本——在通信步骤之前修剪模型参数。此外,这种在训练过程中的渐进模型修剪方法也可以减少训练时间/成本。为此,我们提出了FedSparsify,它在联邦训练期间执行模型修剪。在我们集中和联合设置的大脑年龄预测任务(从他们的大脑MRI中估计一个人的年龄)的实验中,我们证明了即使在具有高度异构数据分布的具有挑战性的联邦学习环境中,模型也可以被修剪到95%的稀疏度而不影响性能。模型修剪的一个惊人的好处是改进了模型的私密性。我们证明了具有高稀疏度的模型不易受到成员推理攻击(一种隐私攻击)的影响。
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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