Paper ID: 2504.20733 • Published Apr 29, 2025
Unsupervised Surrogate Anomaly Detection
Simon Klüttermann, Tim Katzke, Emmanuel Müller
TU Dortmund University
TL;DR
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In this paper, we study unsupervised anomaly detection algorithms that learn
a neural network representation, i.e. regular patterns of normal data, which
anomalies are deviating from. Inspired by a similar concept in engineering, we
refer to our methodology as surrogate anomaly detection. We formalize the
concept of surrogate anomaly detection into a set of axioms required for
optimal surrogate models and propose a new algorithm, named DEAN (Deep Ensemble
ANomaly detection), designed to fulfill these criteria. We evaluate DEAN on 121
benchmark datasets, demonstrating its competitive performance against 19
existing methods, as well as the scalability and reliability of our method.
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