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Neural Stochastic Differential Equations with Neural Processes Family Members for Uncertainty Estimation in Deep Learning
2021
Sensors
Existing neural stochastic differential equation models, such as SDE-Net, can quantify the uncertainties of deep neural networks (DNNs) from a dynamical system perspective. SDE-Net is either dominated by its drift net with in-distribution (ID) data to achieve good predictive accuracy, or dominated by its diffusion net with out-of-distribution (OOD) data to generate high diffusion for characterizing model uncertainty. However, it does not consider the general situation in a wider field, such as
doi:10.3390/s21113708
pmid:34073566
fatcat:wljxdyt44jcv5gneia56rg4fke