English

Beyond the Mean: Modelling Annotation Distributions in Continuous Affect Prediction

Machine Learning 2026-04-09 v1 Emerging Technologies

Abstract

Emotion annotation is inherently subjective and cognitively demanding, producing signals that reflect diverse perceptions across annotators rather than a single ground truth. In continuous affect prediction, this variability is typically collapsed into point estimates such as the mean or median, discarding valuable information about annotator disagreement and uncertainty. In this work, we propose a distribution-aware framework that models annotation consensus using the Beta distribution. Instead of predicting a single affect value, models estimate the mean and standard deviation of the annotation distribution, which are transformed into valid Beta parameters through moment matching. This formulation enables the recovery of higher-order distributional descriptors, including skewness, kurtosis, and quantiles, in closed form. As a result, the model captures not only the central tendency of emotional perception but also variability, asymmetry, and uncertainty in annotator responses. We evaluate the proposed approach on the SEWA and RECOLA datasets using multimodal features. Experimental results show that Beta-based modelling produces predictive distributions that closely match the empirical annotator distributions while achieving competitive performance with conventional regression approaches. These findings highlight the importance of modelling annotation uncertainty in affective computing and demonstrate the potential of distribution-aware learning for subjective signal analysis.

Keywords

Cite

@article{arxiv.2604.07198,
  title  = {Beyond the Mean: Modelling Annotation Distributions in Continuous Affect Prediction},
  author = {Kosmas Pinitas and Ilias Maglogiannis},
  journal= {arXiv preprint arXiv:2604.07198},
  year   = {2026}
}

Comments

This paper has been accepted at the CVPR 2026 Workshop on Affective Behavior Analysis in-the-wild (ABAW)

R2 v1 2026-07-01T11:59:29.373Z