Literature DB >> 35860036

Understanding Failures in Out-of-Distribution Detection with Deep Generative Models.

Lily H Zhang1, Mark Goldstein1, Rajesh Ranganath1.   

Abstract

Deep generative models (dgms) seem a natural fit for detecting out-of-distribution (ood) inputs, but such models have been shown to assign higher probabilities or densities to ood images than images from the training distribution. In this work, we explain why this behavior should be attributed to model misestimation. We first prove that no method can guarantee performance beyond random chance without assumptions on which out-distributions are relevant. We then interrogate the typical set hypothesis, the claim that relevant out-distributions can lie in high likelihood regions of the data distribution, and that ood detection should be defined based on the data distribution's typical set. We highlight the consequences implied by assuming support overlap between in- and out-distributions, as well as the arbitrariness of the typical set for ood detection. Our results suggest that estimation error is a more plausible explanation than the misalignment between likelihood-based ood detection and out-distributions of interest, and we illustrate how even minimal estimation error can lead to ood detection failures, yielding implications for future work in deep generative modeling and ood detection.

Entities:  

Year:  2021        PMID: 35860036      PMCID: PMC9295254     

Source DB:  PubMed          Journal:  Proc Mach Learn Res


  1 in total

1.  Perfect Density Models Cannot Guarantee Anomaly Detection.

Authors:  Charline Le Lan; Laurent Dinh
Journal:  Entropy (Basel)       Date:  2021-12-16       Impact factor: 2.524

  1 in total
  1 in total

1.  Fast and Efficient Image Novelty Detection Based on Mean-Shifts.

Authors:  Matthias Hermann; Georg Umlauf; Bastian Goldlücke; Matthias O Franz
Journal:  Sensors (Basel)       Date:  2022-10-10       Impact factor: 3.847

  1 in total

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