Privacy-Preserving Federated Recurrent Neural Networks

Sinem Sav, Abdulrahman Diaa, Apostolos Pyrgelis, Jean-Philippe Bossuat, Jean-Pierre Hubaux
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Abstract

We present RHODE, a novel system that enables privacy-preserving training of and prediction on Recurrent Neural Networks (RNNs) in a cross-silo federated learning setting by relying on multiparty homomorphic encryption. RHODE preserves the confidentiality of the training data, the model, and the prediction data; and it mitigates federated learning attacks that target the gradients under a passive-adversary threat model. We propose a packing scheme, multi-dimensional packing, for a better utilization of Single Instruction, Multiple Data (SIMD) operations under encryption. With multi-dimensional packing, RHODE enables the efficient processing, in parallel, of a batch of samples. To avoid the exploding gradients problem, RHODE provides several clipping approximations for performing gradient clipping under encryption. We experimentally show that the model performance with RHODE remains similar to non-secure solutions both for homogeneous and heterogeneous data distributions among the data holders. Our experimental evaluation shows that RHODE scales linearly with the number of data holders and the number of timesteps, sub-linearly and sub-quadratically with the number of features and the number of hidden units of RNNs, respectively. To the best of our knowledge, RHODE is the first system that provides the building blocks for the training of RNNs and its variants, under encryption in a federated learning setting.
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隐私保护联邦递归神经网络
我们提出了RHODE,这是一种新的系统,通过依赖多方同态加密,可以在跨竖井联邦学习设置中对循环神经网络(rnn)进行隐私保护训练和预测。RHODE对训练数据、模型和预测数据保密;它还减轻了在被动对手威胁模型下针对梯度的联合学习攻击。为了更好地利用加密下的单指令多数据(SIMD)操作,我们提出了一种多维打包方案。凭借多维包装,RHODE能够并行高效地处理一批样品。为了避免梯度爆炸问题,RHODE提供了几种在加密下执行梯度裁剪的裁剪近似。我们通过实验表明,对于数据持有者之间的同构和异构数据分布,使用RHODE的模型性能仍然类似于非安全解决方案。我们的实验评估表明,RHODE与数据持有者数量和时间步长数量呈线性关系,与rnn的特征数量和隐藏单元数量分别呈亚线性和亚二次关系。据我们所知,RHODE是第一个在联邦学习设置下加密为rnn及其变体的训练提供构建块的系统。
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