학술논문

Misclassification Risk and Uncertainty Quantification in Deep Classifiers
Document Type
Conference
Source
2021 IEEE Winter Conference on Applications of Computer Vision (WACV) WACV Applications of Computer Vision (WACV), 2021 IEEE Winter Conference on. :2483-2491 Jan, 2021
Subject
Computing and Processing
Training
Deep learning
Computer vision
Uncertainty
Conferences
Decision making
Predictive models
Language
ISSN
2642-9381
Abstract
In this paper, we propose risk-calibrated evidential deep classifiers to reduce the costs associated with classification errors. We use two main approaches. The first is to develop methods to quantify the uncertainty of a classifier’s predictions and reduce the likelihood of acting on erroneous predictions. The second is a novel way to train the classifier such that erroneous classifications are biased towards less risky categories. We combine these two approaches in a principled way. While doing this, we extend evidential deep learning with pignistic probabilities, which are used to quantify uncertainty of classification predictions and model rational decision making under uncertainty.We evaluate the performance of our approach on several image classification tasks. We demonstrate that our approach allows to (i) incorporate misclassification cost while training deep classifiers, (ii) accurately quantify the uncertainty of classification predictions, and (iii) simultaneously learn how to make classification decisions to minimize expected cost of classification errors.