Deep Quantile Regression for Uncertainty Estimation in Unsupervised and Supervised Lesion Detection

Volume: 1, Issue: IPMI 2021, Pages: 1 - 23
Published: Apr 27, 2022
Abstract
Despite impressive state-of-the-art performance on a wide variety of machine learning tasks in multiple applications, deep learning methods can produce over-confident predictions, particularly with limited training data. Therefore, quantifying uncertainty is particularly important in critical applications such as lesion detection and clinical diagnosis, where a realistic assessment of uncertainty is essential in determining surgical margins,...
Paper Details
Title
Deep Quantile Regression for Uncertainty Estimation in Unsupervised and Supervised Lesion Detection
Published Date
Apr 27, 2022
Volume
1
Issue
IPMI 2021
Pages
1 - 23
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