Uncertainty Estimation by Density Aware Evidential Deep Learning

Taeseong Yoon, Heeyoung Kim
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Abstract

Evidential deep learning (EDL) has shown remarkable success in uncertainty estimation. However, there is still room for improvement, particularly in out-of-distribution (OOD) detection and classification tasks. The limited OOD detection performance of EDL arises from its inability to reflect the distance between the testing example and training data when quantifying uncertainty, while its limited classification performance stems from its parameterization of the concentration parameters. To address these limitations, we propose a novel method called Density Aware Evidential Deep Learning (DAEDL). DAEDL integrates the feature space density of the testing example with the output of EDL during the prediction stage, while using a novel parameterization that resolves the issues in the conventional parameterization. We prove that DAEDL enjoys a number of favorable theoretical properties. DAEDL demonstrates state-of-the-art performance across diverse downstream tasks related to uncertainty estimation and classification
通过密度感知证据深度学习进行不确定性估计
证据深度学习(EDL)在不确定性估计方面取得了显著的成功。然而,仍有改进的余地,尤其是在分布外(OOD)检测和分类任务中。EDL 的 OOD 检测性能有限,是因为它在量化不确定性时无法反映测试示例与训练数据之间的距离,而它的分类性能有限,则源于它对浓度参数的参数化。为了解决这些局限性,我们提出了一种名为 "密度感知证据深度学习"(DAEDL)的新方法。DAEDL 在预测阶段将测试示例的特征空间密度与 EDL 的输出进行整合,同时使用一种新型参数化方法来解决传统参数化方法中存在的问题。我们证明了 DAEDL 具有许多有利的理论特性。在与不确定性估计和分类相关的各种下游任务中,DAEDL 展示了最先进的性能
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