Uncertainty disentanglement with non-stationary heteroscedastic gaussian processes for active learning
Source
arXiv
Date Issued
2022-10-01
Abstract
Gaussian processes are Bayesian non-parametric models used in many areas. In this work, we propose a Non-stationary Heteroscedastic Gaussian process model which can be learned with gradient-based techniques. We demonstrate the interpretability of the proposed model by separating the overall uncertainty into aleatoric (irreducible) and epistemic (model) uncertainty. We illustrate the usability of derived epistemic uncertainty on active learning problems. We demonstrate the efficacy of our model with various ablations on multiple datasets.
Subjects
Gaussian processes
Bayesian non-parametric models
Aleatoric uncertainty
Epistemic uncertainty
Heteroscedastic Gaussian process model
