REPEAT: Improving Uncertainty Estimation in Representation Learning Explainability

Authors

  • Kristoffer K. Wickstrøm Department of Physics and Technology, UiT The Arctic University of Norway
  • Thea Brüsch Department of Applied Mathematics and Computer Science, Technical University of Denmark
  • Michael C. Kampffmeyer Department of Physics and Technology, UiT The Arctic University of Norway Norwegian Computing Center, Oslo, Norway
  • Robert Jenssen Department of Physics and Technology, UiT The Arctic University of Norway Norwegian Computing Center, Oslo, Norway Pioneer Centre for AI, University of Copenhagen, Denmark

DOI:

https://doi.org/10.1609/aaai.v39i8.32900

Abstract

Incorporating uncertainty is crucial to provide trustworthy explanations of deep learning models. Recent works have demonstrated how uncertainty modeling can be particularly important in the unsupervised field of representation learning explainable artificial intelligence (R-XAI). Current R-XAI methods provide uncertainty by measuring variability in the importance score. However, they fail to provide meaningful estimates of whether a pixel is certainly important or not. In this work, we propose a new R-XAI method called REPEAT that addresses the key question of whether or not a pixel is certainly important. REPEAT leverages the stochasticity of current R-XAI methods to produce multiple estimates of importance, thus considering each pixel in an image as a Bernoulli random variable that is either important or unimportant. From these Bernoulli random variables we can directly estimate the importance of a pixel and its associated certainty, thus enabling users to determine certainty in pixel importance. Our extensive evaluation shows that REPEAT gives certainty estimates that are more intuitive, better at detecting out-of-distribution data, and more concise.

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Published

2025-04-11

How to Cite

Wickstrøm, K. K., Brüsch, T., Kampffmeyer, M. C., & Jenssen, R. (2025). REPEAT: Improving Uncertainty Estimation in Representation Learning Explainability. Proceedings of the AAAI Conference on Artificial Intelligence, 39(8), 8341–8350. https://doi.org/10.1609/aaai.v39i8.32900

Issue

Section

AAAI Technical Track on Computer Vision VII