A loss framework for calibrated anomaly detection
Date
Authors
Menon, Aditya Krishna
Williamson, Robert C.
Journal Title
Journal ISSN
Volume Title
Publisher
Access Statement
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
Collections
Source
Advances in Neural Information Processing Systems
Type
Book Title
Entity type
Publication