DEMAU: Decompose, Explore, Model & Analyse Uncertainties
Abstract
Recent research in machine learning has given rise to a flourishing literature on the quantification
and decomposition of model uncertainty. This information can be very useful during
interactions with the learner, such as in active learning or adaptive learning, and especially in
uncertainty sampling. To allow a simple representation of these total, epistemic (reducible)
and aleatoric (irreducible) uncertainties, we offer DEMAU, an open-source educational, exploratory
and analytical tool allowing to visualize and explore several types of uncertainty for
classification models in machine learning.