Towards a Trustworthy Anomaly Detection for Critical Applications through Approximated Partial AUC Loss
Journal:
arXiv
Published Date:
Feb 17, 2025
Abstract
Anomaly Detection is a crucial step for critical applications such in the
industrial, medical or cybersecurity domains. These sectors share the same
requirement of handling differently the different types of classification
errors. Indeed, even if false positives are acceptable, false negatives are
not, because it would reflect a missed detection of a quality issue, a disease
or a cyber threat. To fulfill this requirement, we propose a method that
dynamically applies a trustworthy approximated partial AUC ROC loss (tapAUC). A
binary classifier is trained to optimize the specific range of the AUC ROC
curve that prevents the True Positive Rate (TPR) to reach 100% while minimizing
the False Positive Rate (FPR). The optimal threshold that does not trigger any
false negative is then kept and used at the test step. The results show a TPR
of 92.52% at a 20.43% FPR for an average across 6 datasets, representing a TPR
improvement of 4.3% for a FPR cost of 12.2% against other state-of-the-art
methods. The code is available at https://github.com/ArnaudBougaham/tapAUC.