Misclassification Risk and Uncertainty Quantification in Deep Classifiers

Murat Sensoy, Maryam Saleki, S. Julier, Reyhan Aydoğan, John Reid
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引用次数: 11

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.
深度分类器的误分类风险与不确定性量化
在本文中,我们提出了风险校准的证据深度分类器,以减少与分类错误相关的成本。我们主要使用两种方法。首先是开发方法来量化分类器预测的不确定性,并减少对错误预测采取行动的可能性。第二种是训练分类器的新方法,使错误的分类偏向于风险较小的类别。我们以一种有原则的方式将这两种方法结合起来。在此过程中,我们将证据深度学习扩展为皮格尼论概率,用于量化分类预测的不确定性,并对不确定性下的理性决策建模。我们在几个图像分类任务中评估了我们的方法的性能。我们证明,我们的方法允许(i)在训练深度分类器时纳入错误分类成本,(ii)准确量化分类预测的不确定性,以及(iii)同时学习如何做出分类决策以最小化分类错误的预期成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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