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SDE-Net: Equipping Deep Neural Networks with Uncertainty Estimates
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SDE-Net: Equipping Deep Neural Networks with Uncertainty Estimates
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Uncertainty quantification is a fundamental yet unsolved problem for deep learning. The Bayesian framework provides a principled way of uncertainty estimation but is often not scalable to modern deep neural nets (DNNs) that have a large number of parameters. Non-Bayesian methods are simple to implement but often conflate different sources of uncertainties and require huge computing resources. We propose a new method for quantifying uncertainties of DNNs from a dynamical system perspective. The core of our method is to view DNN transformations as state evolution of a stochastic dynamical system and introduce a Brownian motion term for capturing epistemic uncertainty. Based on this perspective, we propose a neural stochastic differential equation model (SDE-Net) which consists of (1) a drift net that controls the system to fit the predictive function; and (2) a diffusion net that captures epistemic uncertainty. We theoretically analyze the existence and uniqueness of the solution to SDE-Net. Our experiments demonstrate that the SDE-Net model can outperform existing uncertainty estimation methods across a series of tasks where uncertainty plays a fundamental role.
Forward citations
Cited by 3 Pith papers
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Hypergraph Neural Stochastic Diffusion: An SDE Framework for Uncertainty Estimation
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Neuronal Stochastic Attention Circuit (NSAC) for Probabilistic Representation Learning
NSAC reformulates attention logit computation as the solution of an Ornstein-Uhlenbeck SDE with input-dependent nonlinear gates from NCPs to induce Gaussian distributions over logits and logistic-normal distributions ...
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A numerical study into neural network surrogate model performance for uncertainty propagation
Numerical study comparing feedforward NN and DeepONet with data-driven and physics-informed losses on stochastic heat equation, highlighting larger errors at distribution tails due to extrapolation.
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