论文标题
对分布外检测的趋势,应用和挑战的全面审查
A Comprehensive Review of Trends, Applications and Challenges In Out-of-Distribution Detection
论文作者
论文摘要
随着人工智能的最新进展,它的应用可以在人类日常生活的各个方面看到。从语音助手到移动医疗保健和自动驾驶,我们依靠AI方法的性能来完成许多关键任务;因此,必须以适当的手段来确定模型的性能以防止损坏。通常,AI模型的短缺之一,尤其是深度机器学习,当面对数据分布的变化时,性能下降。尽管如此,在现实世界应用中始终期望这些转变。因此,出现了一个研究领域,重点是检测分布外数据子集并实现更全面的概括。此外,由于许多基于深度学习的模型在基准数据集上都取得了几乎完美的结果,因此需要评估这些模型的可靠性和可信赖性,以推向现实世界应用程序的可靠性和可信赖性。这引起了越来越多的研究领域的研究和领域概括,这刺激了对从各个角度进行比较这些研究的调查的需求,并突出了它们的平直和弱点。本文介绍了一项调查,除了审查该领域的70多个论文外,还提出了未来作品的挑战和方向,并为各种类型的数据转移和解决方案提供了统一的外观,以进行更好的概括。
With recent advancements in artificial intelligence, its applications can be seen in every aspect of humans' daily life. From voice assistants to mobile healthcare and autonomous driving, we rely on the performance of AI methods for many critical tasks; therefore, it is essential to assert the performance of models in proper means to prevent damage. One of the shortfalls of AI models in general, and deep machine learning in particular, is a drop in performance when faced with shifts in the distribution of data. Nonetheless, these shifts are always expected in real-world applications; thus, a field of study has emerged, focusing on detecting out-of-distribution data subsets and enabling a more comprehensive generalization. Furthermore, as many deep learning based models have achieved near-perfect results on benchmark datasets, the need to evaluate these models' reliability and trustworthiness for pushing towards real-world applications is felt more strongly than ever. This has given rise to a growing number of studies in the field of out-of-distribution detection and domain generalization, which begs the need for surveys that compare these studies from various perspectives and highlight their straightens and weaknesses. This paper presents a survey that, in addition to reviewing more than 70 papers in this field, presents challenges and directions for future works and offers a unifying look into various types of data shifts and solutions for better generalization.