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arxiv: 2107.04296 · v2 · pith:H4KAJWUW · submitted 2021-07-09 · cs.LG · cs.CR· cs.CV

Differentially private training of neural networks with Langevin dynamics for calibrated predictive uncertainty

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classification cs.LG cs.CRcs.CV
keywords dp-sgddifferentiallynetworksneuralprivatebayesiancalibrateddeep
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We show that differentially private stochastic gradient descent (DP-SGD) can yield poorly calibrated, overconfident deep learning models. This represents a serious issue for safety-critical applications, e.g. in medical diagnosis. We highlight and exploit parallels between stochastic gradient Langevin dynamics, a scalable Bayesian inference technique for training deep neural networks, and DP-SGD, in order to train differentially private, Bayesian neural networks with minor adjustments to the original (DP-SGD) algorithm. Our approach provides considerably more reliable uncertainty estimates than DP-SGD, as demonstrated empirically by a reduction in expected calibration error (MNIST $\sim{5}$-fold, Pediatric Pneumonia Dataset $\sim{2}$-fold).

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