Pairing an arbitrary regressor with an artificial neural network estimating aleatoric uncertainty
Pavel Gurevich, Hannes Stuke

TL;DR
This paper introduces a novel neural network approach that jointly trains two models to quantify aleatoric uncertainty in regression tasks without assuming prior probability distributions, improving prediction accuracy and enabling ensemble-based uncertainty estimation.
Contribution
It proposes a general method for aleatoric uncertainty quantification using paired neural networks with a hyperparameter controlling noise detection, without relying on likelihood maximization.
Findings
Small lambda values enhance the contribution of clean regions, improving predictions.
The method effectively distinguishes noisy from clean data regions.
Ensembles of paired networks capture both aleatoric and epistemic uncertainties.
Abstract
We suggest a general approach to quantification of different forms of aleatoric uncertainty in regression tasks performed by artificial neural networks. It is based on the simultaneous training of two neural networks with a joint loss function and a specific hyperparameter that allows for automatically detecting noisy and clean regions in the input space and controlling their {\em relative contribution} to the loss and its gradients. After the model has been trained, one of the networks performs predictions and the other quantifies the uncertainty of these predictions by estimating the locally averaged loss of the first one. Unlike in many classical uncertainty quantification methods, we do not assume any a priori knowledge of the ground truth probability distribution, neither do we, in general, maximize the likelihood of a chosen parametric family of distributions. We…
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