Quantification of Uncertainty with Adversarial Models

Research output: Chapter in Book/Report/Conference proceedingConference proceedingspeer-review

Abstract

Quantifying uncertainty is important for actionable predictions in real-world applications. A crucial part of predictive uncertainty quantification is the estimation of epistemic uncertainty, which is defined as an integral of the product between a divergence function and the posterior. Current methods such as Deep Ensembles or MC dropout underperform at estimating the epistemic uncertainty, since they primarily consider the posterior when sampling models. We suggest Quantification of Uncertainty with Adversarial Models (QUAM) to better estimate the epistemic uncertainty. QUAM identifies regions where the whole product under the integral is large, not just the posterior. Consequently, QUAM has lower approximation error of the epistemic uncertainty compared to previous methods. Models for which the product is large correspond to adversarial models (not adversarial examples!). Adversarial models have both a high posterior as well as a high divergence between their predictions and that of a reference model. Our experiments show that QUAM excels in capturing epistemic uncertainty for deep learning models and outperforms previous methods on challenging tasks in the vision domain.
Original languageEnglish
Title of host publicationConference Neural Information Processing Systems Foundation (NeurIPS 2023)
Number of pages39
Publication statusPublished - 2023

Fields of science

  • 305907 Medical statistics
  • 202017 Embedded systems
  • 202036 Sensor systems
  • 101004 Biomathematics
  • 101014 Numerical mathematics
  • 101015 Operations research
  • 101016 Optimisation
  • 101017 Game theory
  • 101018 Statistics
  • 101019 Stochastics
  • 101024 Probability theory
  • 101026 Time series analysis
  • 101027 Dynamical systems
  • 101028 Mathematical modelling
  • 101029 Mathematical statistics
  • 101031 Approximation theory
  • 102 Computer Sciences
  • 102001 Artificial intelligence
  • 102003 Image processing
  • 102004 Bioinformatics
  • 102013 Human-computer interaction
  • 102018 Artificial neural networks
  • 102019 Machine learning
  • 102032 Computational intelligence
  • 102033 Data mining
  • 305901 Computer-aided diagnosis and therapy
  • 305905 Medical informatics
  • 202035 Robotics
  • 202037 Signal processing
  • 103029 Statistical physics
  • 106005 Bioinformatics
  • 106007 Biostatistics

JKU Focus areas

  • Digital Transformation

Cite this