差分私有贝叶斯神经网络的准确性、隐私性和可靠性。

Qiyiwen Zhang, Zhiqi Bu, Kan Chen, Qi Long
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引用次数: 8

摘要

贝叶斯神经网络(BNN)允许在预测中对不确定性进行量化,与差分隐私(DP)框架中尚未探索的常规神经网络相比,它具有优势。我们利用贝叶斯深度学习和隐私会计的最新发展来填补这一重要空白,对BNN中隐私和准确性之间的权衡提供更精确的分析。我们提出了三个dp - bnn,它们以不同的方式表征相同网络架构的权重不确定性,即DP-SGLD(通过噪声梯度方法),DP-BBP(通过改变感兴趣的参数)和DP-MC Dropout(通过模型架构)。有趣的是,我们展示了DP- sgd和DP- sgld之间新的等价性,这意味着一些非贝叶斯DP训练自然允许不确定性量化。然而,学习率和批大小等超参数在DP-SGD和DP-SGD中可能会产生不同甚至相反的影响。在隐私保障、预测精度、不确定性量化、校准、计算速度和对网络架构的通用性等方面进行了大量的实验来比较dp - bnn。因此,我们观察到隐私和可靠性之间的新权衡。与非dp和非贝叶斯方法相比,DP-SGLD在强大的隐私保证下具有非常高的准确性,这表明DP-BNN在现实任务中的巨大潜力。
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Differentially Private Bayesian Neural Networks on Accuracy, Privacy and Reliability.

Bayesian neural network (BNN) allows for uncertainty quantification in prediction, offering an advantage over regular neural networks that has not been explored in the differential privacy (DP) framework. We fill this important gap by leveraging recent development in Bayesian deep learning and privacy accounting to offer a more precise analysis of the trade-off between privacy and accuracy in BNN. We propose three DP-BNNs that characterize the weight uncertainty for the same network architecture in distinct ways, namely DP-SGLD (via the noisy gradient method), DP-BBP (via changing the parameters of interest) and DP-MC Dropout (via the model architecture). Interestingly, we show a new equivalence between DP-SGD and DP-SGLD, implying that some non-Bayesian DP training naturally allows for uncertainty quantification. However, the hyperparameters such as learning rate and batch size, can have different or even opposite effects in DP-SGD and DP-SGLD. Extensive experiments are conducted to compare DP-BNNs, in terms of privacy guarantee, prediction accuracy, uncertainty quantification, calibration, computation speed, and generalizability to network architecture. As a result, we observe a new tradeoff between the privacy and the reliability. When compared to non-DP and non-Bayesian approaches, DP-SGLD is remarkably accurate under strong privacy guarantee, demonstrating the great potential of DP-BNN in real-world tasks.

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