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Robust Neural Regression via Uncertainty Learning

2021-10-12 23:19:13
Akib Mashrur, Wei Luo, Nayyar A. Zaidi, Antonio Robles-Kelly

Abstract

Deep neural networks tend to underestimate uncertainty and produce overly confident predictions. Recently proposed solutions, such as MC Dropout and SDENet, require complex training and/or auxiliary out-of-distribution data. We propose a simple solution by extending the time-tested iterative reweighted least square (IRLS) in generalised linear regression. We use two sub-networks to parametrise the prediction and uncertainty estimation, enabling easy handling of complex inputs and nonlinear response. The two sub-networks have shared representations and are trained via two complementary loss functions for the prediction and the uncertainty estimates, with interleaving steps as in a cooperative game. Compared with more complex models such as MC-Dropout or SDE-Net, our proposed network is simpler to implement and more robust (insensitive to varying aleatoric and epistemic uncertainty).

Abstract (translated)

URL

https://arxiv.org/abs/2110.06395

PDF

https://arxiv.org/pdf/2110.06395.pdf


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