论文标题
对深而浅的异常检测的统一审查
A Unifying Review of Deep and Shallow Anomaly Detection
论文作者
论文摘要
深度学习方法的异常检测方法最近在复杂数据集(例如大量图像或文本集合)上改善了检测性能的最新状态。这些结果激发了人们对异常检测问题的重新兴趣,并导致了各种各样的新方法。随着许多此类方法的出现,包括基于生成模型,一级分类和重建的方法,越来越需要将该领域的方法带入系统和统一的观点。在这篇综述中,我们旨在确定常见的基本原则以及通常通过各种方法隐式做出的假设。特别是,我们在经典的“浅”和新颖的深度方法之间建立了联系,并展示了这种关系如何交叉使用或扩展这两个方向。我们进一步提供了对主要现有方法的经验评估,该方法通过使用最近的解释性技术丰富,并提供特定的工作示例以及实际建议。最后,我们概述了关键的开放挑战,并确定了在异常检测中未来研究的具体途径。
Deep learning approaches to anomaly detection have recently improved the state of the art in detection performance on complex datasets such as large collections of images or text. These results have sparked a renewed interest in the anomaly detection problem and led to the introduction of a great variety of new methods. With the emergence of numerous such methods, including approaches based on generative models, one-class classification, and reconstruction, there is a growing need to bring methods of this field into a systematic and unified perspective. In this review we aim to identify the common underlying principles as well as the assumptions that are often made implicitly by various methods. In particular, we draw connections between classic 'shallow' and novel deep approaches and show how this relation might cross-fertilize or extend both directions. We further provide an empirical assessment of major existing methods that is enriched by the use of recent explainability techniques, and present specific worked-through examples together with practical advice. Finally, we outline critical open challenges and identify specific paths for future research in anomaly detection.