On the performance of uncertainty estimation methods for deep-learning based image classification models

L. F. P. Cattelan, Danilo Silva
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引用次数: 2

Abstract

Previous works have shown that modern neural networks tend to be overconfident; thus, for deep learning models to be trusted and adopted in critical applications, reliable uncertainty estimation (UE) is essential. However, many questions are still open regarding how to fairly compare UE methods. This work focuses on the task of selective classification and proposes a methodology where the predictions of the underlying model are kept fixed and only the UE method is allowed to vary. Experiments are performed for convolutional neural networks using Deep Ensembles and Monte Carlo Dropout. Surprisingly, our results show that the conventional softmax response can outperform most other UE methods for a large part of the risk-coverage curve.
基于深度学习的图像分类模型不确定性估计方法的性能研究
先前的研究表明,现代神经网络往往过于自信;因此,要使深度学习模型在关键应用中得到信任和采用,可靠的不确定性估计(UE)是必不可少的。然而,关于如何公平地比较UE方法,仍然存在许多问题。这项工作的重点是选择性分类的任务,并提出了一种方法,其中底层模型的预测保持固定,只允许UE方法变化。利用深度集成和蒙特卡罗Dropout对卷积神经网络进行了实验。令人惊讶的是,我们的结果表明,对于风险覆盖曲线的大部分,传统的softmax响应可以优于大多数其他UE方法。
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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