A loss framework for calibrated anomaly detection

Date

Authors

Menon, Aditya Krishna
Williamson, Robert C.

Journal Title

Journal ISSN

Volume Title

Publisher

Access Statement

Research Projects

Organizational Units

Journal Issue

Abstract

Given samples from a distribution, anomaly detection is the problem of determining if a given point lies in a low-density region. This paper concerns calibrated anomaly detection, which is the practically relevant extension where we additionally wish to produce a confidence score for a point being anomalous. Building on a classification framework for standard anomaly detection, we show how minimisation of a suitable proper loss produces density estimates only for anomalous instances. These are shown to naturally relate to the pinball loss, which provides implicit quantile control. Finally, leveraging a result from point processes, we show how to efficiently optimise a special case of the objective with kernelised scores. Our framework is shown to incorporate a close relative of the one-class SVM as a special case.

Description

Keywords

Citation

Source

Advances in Neural Information Processing Systems

Book Title

Entity type

Publication

Access Statement

License Rights

DOI

Restricted until