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Unsupervised Feature Construction for Anomaly Detection in Time Series -- An Evaluation

Authors :
Hamon, Marine
Lemaire, Vincent
Nair-Benrekia, Nour Eddine Yassine
Berlemont, Samuel
Cumin, Julien
Publication Year :
2025

Abstract

To detect anomalies with precision and without prior knowledge in time series, is it better to build a detector from the initial temporal representation, or to compute a new (tabular) representation using an existing automatic variable construction library? In this article, we address this question by conducting an in-depth experimental study for two popular detectors (Isolation Forest and Local Outlier Factor). The obtained results, for 5 different datasets, show that the new representation, computed using the tsfresh library, allows Isolation Forest to significantly improve its performance.<br />Comment: 7

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.07999
Document Type :
Working Paper