title: Towards Unsupervised Validation of AnomalyDetection Models

publish date:

2024-10-18

authors:

Lihi Idan et.al.

paper id

2410.14579v1

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abstracts:

Unsupervised validation of anomaly-detection models is a highly challenging task. While the common practices for model validation involve a labeled validation set, such validation sets cannot be constructed when the underlying datasets are unlabeled. The lack of robust and efficient unsupervised model-validation techniques presents an acute challenge in the implementation of automated anomaly-detection pipelines, especially when there exists no prior knowledge of the model’s performance on similar datasets. This work presents a new paradigm to automated validation of anomaly-detection models, inspired by real-world, collaborative decision-making mechanisms. We focus on two commonly-used, unsupervised model-validation tasks — model selection and model evaluation — and provide extensive experimental results that demonstrate the accuracy and robustness of our approach on both tasks.

QA:

coming soon

编辑整理: wanghaisheng 更新日期:2024 年 10 月 21 日