Aleatoric Uncertainty for Errors-in-Variables Models in Deep Regression

被引:0
|
作者
J. Martin
C. Elster
机构
[1] Physikalisch-Technische Bundesanstalt,
来源
Neural Processing Letters | 2023年 / 55卷
关键词
Errors-in-variables; Bayesian neural networks; Aleatoric uncertainty; Variational inference;
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摘要
A Bayesian treatment of deep learning allows for the computation of uncertainties associated with the predictions of deep neural networks. We show how the concept of Errors-in-Variables can be used in Bayesian deep regression to also account for the uncertainty associated with the input of the employed neural network. The presented approach thereby exploits a relevant, but generally overlooked, source of uncertainty and yields a decomposition of the predictive uncertainty into an aleatoric and epistemic part that is more complete and, in many cases, more consistent from a statistical perspective. We discuss the approach along various simulated and real examples and observe that using an Errors-in-Variables model leads to an increase in the uncertainty while preserving the prediction performance of models without Errors-in-Variables. For examples with known regression function we observe that this ground truth is substantially better covered by the Errors-in-Variables model, indicating that the presented approach leads to a more reliable uncertainty estimation.
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页码:4799 / 4818
页数:19
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