作者
Yiyou Sun, Yifei Ming, Xiaojin Zhu, Yixuan Li
发表日期
2022/6/28
研讨会论文
International Conference on Machine Learning
页码范围
20827-20840
出版商
PMLR
简介
Out-of-distribution (OOD) detection is a critical task for deploying machine learning models in the open world. Distance-based methods have demonstrated promise, where testing samples are detected as OOD if they are relatively far away from in-distribution (ID) data. However, prior methods impose a strong distributional assumption of the underlying feature space, which may not always hold. In this paper, we explore the efficacy of non-parametric nearest-neighbor distance for OOD detection, which has been largely overlooked in the literature. Unlike prior works, our method does not impose any distributional assumption, hence providing stronger flexibility and generality. We demonstrate the effectiveness of nearest-neighbor-based OOD detection on several benchmarks and establish superior performance. Under the same model trained on ImageNet-1k, our method substantially reduces the false positive rate (FPR@ TPR95) by 24.77% compared to a strong baseline SSD+, which uses a parametric approach Mahalanobis distance in detection. Code is available: https://github. com/deeplearning-wisc/knn-ood.
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学术搜索中的文章
Y Sun, Y Ming, X Zhu, Y Li - International Conference on Machine Learning, 2022