Out-of-Distribution Detection: A Task-Oriented Survey of Recent Advances

IF 28 1区 计算机科学 Q1 COMPUTER SCIENCE, THEORY & METHODS
Shuo Lu, Yingsheng Wang, Lijun Sheng, Lingxiao He, Aihua Zheng, Jian Liang
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引用次数: 0

Abstract

Out-of-distribution (OOD) detection aims to detect test samples outside the training category space, which is an essential component in building reliable machine learning systems. Existing reviews on OOD detection primarily focus on method taxonomy, surveying the field by categorizing various approaches. However, many recent works concentrate on non-traditional OOD detection scenarios, such as test-time adaptation, multi-modal data sources and other novel contexts. In this survey, we uniquely review recent advances in OOD detection from the task-oriented perspective for the first time. According to the user’s access to the model, that is, whether the OOD detection method is allowed to modify or retrain the model, we classify the methods as training-driven or training-agnostic. Besides, considering the rapid development of pre-trained models, large pre-trained model-based OOD detection is also regarded as an important category and discussed separately. Furthermore, we provide a discussion of the evaluation scenarios, a variety of applications, and several future research directions. We believe this survey with new taxonomy will benefit the proposal of new methods and the expansion of more practical scenarios. A curated list of related papers is provided in the Github repository: https://github.com/shuolucs/Awesome-Out-Of-Distribution-Detection
分布外检测:以任务为导向的最新研究进展
out -distribution (OOD)检测旨在检测训练类别空间之外的测试样本,这是构建可靠的机器学习系统的重要组成部分。现有的关于OOD检测的综述主要集中在方法分类上,通过对各种方法进行分类来考察该领域。然而,最近的许多研究都集中在非传统的OOD检测场景上,如测试时间适应、多模态数据源和其他新环境。在这项调查中,我们首次从任务导向的角度独特地回顾了OOD检测的最新进展。根据用户对模型的访问权限,即是否允许OOD检测方法修改或重新训练模型,我们将方法分为训练驱动型和训练不可知型。此外,考虑到预训练模型的快速发展,基于大型预训练模型的OOD检测也被视为一个重要的类别,并单独进行了讨论。此外,我们还讨论了评估场景、各种应用以及未来的研究方向。我们相信这一新分类的调查将有利于新方法的提出和更多实际场景的扩展。在Github存储库中提供了相关论文的精选列表:https://github.com/shuolucs/Awesome-Out-Of-Distribution-Detection
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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来源期刊
ACM Computing Surveys
ACM Computing Surveys 工程技术-计算机:理论方法
CiteScore
33.20
自引率
0.60%
发文量
372
审稿时长
12 months
期刊介绍: ACM Computing Surveys is an academic journal that focuses on publishing surveys and tutorials on various areas of computing research and practice. The journal aims to provide comprehensive and easily understandable articles that guide readers through the literature and help them understand topics outside their specialties. In terms of impact, CSUR has a high reputation with a 2022 Impact Factor of 16.6. It is ranked 3rd out of 111 journals in the field of Computer Science Theory & Methods. ACM Computing Surveys is indexed and abstracted in various services, including AI2 Semantic Scholar, Baidu, Clarivate/ISI: JCR, CNKI, DeepDyve, DTU, EBSCO: EDS/HOST, and IET Inspec, among others.
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