异常检测可解释性的一般框架:比较研究

Ambareesh Ravi, Xiaozhuo Yu, Iara Santelices, F. Karray, B. Fidan
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引用次数: 4

摘要

自问世以来,autoencoder在表征学习中一直非常重要。他们在各种关键应用的自动无监督异常检测领域取得了突破性的成果。然而,当涉及到基于AutoEncoder网络输出的决策制定时,通过AutoEncoder进行异常检测缺乏透明度,特别是对于基于图像的模型。尽管来自AutoEncoder的残差重建误差映射在一定程度上有助于解释异常,但它并不是模型隐式学习属性的良好指标。对实例异常原因的人类可解释的解释不仅使专家能够对模型进行微调,而且还建立并增加了模型的非专业用户的信任。卷积自动编码器尤其受影响最大,因为只有有限的研究关注透明度和可解释性。在本文中,为了弥补这一差距,我们探索了几种最先进的可解释人工智能(XAI)框架在卷积自编码器上的可行性并比较了它们的性能。本文还旨在为未来开发可靠、可信的自动编码器提供基础。
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General Frameworks for Anomaly Detection Explainability: Comparative Study
Since their inception, AutoEncoders have been very important in representational learning. They have achieved ground-breaking results in the realm of automated unsupervised anomaly detection for various critical applications. However, anomaly detection through AutoEncoders suffers from lack of transparency when it comes to decision making based on the outputs of the AutoEncoder network, especially for image-based models. Though the residual reconstruction error map from the AutoEncoder helps explaining anomalies to a certain extent, it is not a good indicator of the implicitly learnt attributes by the model. A human interpretable explanation of why an instance is anomalous not only enables the experts to fine-tune the model but also establishes and increases trust by non-expert users of the model. Convolutional AutoEncoders in particular suffer the most as there are only limited studies that focus on transparency and explainability. In this paper, aiming to bridge this gap, we explore the feasibility and compare the performances of several State-of-the-Art Explainable Artificial Intelligence (XAI) frameworks on Convolutional AutoEncoders. The paper also aims at providing the basis for future developments of reliable and trustworthy AutoEncoders for visual anomaly detection.
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