Toward Supervised Anomaly Detection

Abstract

Anomaly detection is being regarded as an unsupervised learning task as anomalies stem from adversarial or unlikely events with unknown distributions. However, the predictive performance of purely unsupervised anomaly detection often fails to match the required detection rates in many tasks and there exists a need for labeled data to guide the model generation. Our first contribution shows that classical semi-supervised approaches, originating from a supervised classifier, are inappropriate and hardly detect new and unknown anomalies. We argue that semi-supervised anomaly detection needs to ground on the unsupervised learning paradigm and devise a novel algorithm that meets this requirement. Although being intrinsically non-convex, we further show that the optimization problem has a convex equivalent under relatively mild assumptions. Additionally, we propose an active learning strategy to automatically filter candidates for labeling. In an empirical study on network intrusion detection data, we observe that the proposed learning methodology requires much less labeled data than the state-of-the-art, while achieving higher detection accuracies.

Cite

Text

Görnitz et al. "Toward Supervised Anomaly Detection." Journal of Artificial Intelligence Research, 2013. doi:10.1613/JAIR.3623

Markdown

[Görnitz et al. "Toward Supervised Anomaly Detection." Journal of Artificial Intelligence Research, 2013.](https://mlanthology.org/jair/2013/gornitz2013jair-supervised/) doi:10.1613/JAIR.3623

BibTeX

@article{gornitz2013jair-supervised,
  title     = {{Toward Supervised Anomaly Detection}},
  author    = {Görnitz, Nico and Kloft, Marius and Rieck, Konrad and Brefeld, Ulf},
  journal   = {Journal of Artificial Intelligence Research},
  year      = {2013},
  pages     = {235-262},
  doi       = {10.1613/JAIR.3623},
  volume    = {46},
  url       = {https://mlanthology.org/jair/2013/gornitz2013jair-supervised/}
}