Uncertainty-aware Evaluation of Time-Series Classification for Online Handwriting Recognition with Domain Shift (2206.08640v1)
Abstract: For many applications, analyzing the uncertainty of a machine learning model is indispensable. While research of uncertainty quantification (UQ) techniques is very advanced for computer vision applications, UQ methods for spatio-temporal data are less studied. In this paper, we focus on models for online handwriting recognition, one particular type of spatio-temporal data. The data is observed from a sensor-enhanced pen with the goal to classify written characters. We conduct a broad evaluation of aleatoric (data) and epistemic (model) UQ based on two prominent techniques for Bayesian inference, Stochastic Weight Averaging-Gaussian (SWAG) and Deep Ensembles. Next to a better understanding of the model, UQ techniques can detect out-of-distribution data and domain shifts when combining right-handed and left-handed writers (an underrepresented group).
- Andreas Klaß (2 papers)
- Sven M. Lorenz (1 paper)
- Martin W. Lauer-Schmaltz (1 paper)
- David Rügamer (74 papers)
- Bernd Bischl (136 papers)
- Christopher Mutschler (59 papers)
- Felix Ott (19 papers)