Ignoring Distractors in the Absence of Labels: Optimal Linear Projection to Remove False Positives During Anomaly Detection
Allison Del Giorno, J. Andrew Bagnell, Martial Hebert

TL;DR
This paper introduces FOCUS, an unsupervised linear projection method that removes distractor features in anomaly detection, improving detection accuracy without requiring labeled data or matching contexts.
Contribution
The paper presents a novel unsupervised linear projection technique, FOCUS, that effectively removes distractor features in anomaly detection without labeled data or context matching.
Findings
Removes uninformative features in anomaly detection
Operates without labeled data or context matching
Reduces false positives by feature alignment
Abstract
In the anomaly detection setting, the native feature embedding can be a crucial source of bias. We present a technique, Feature Omission using Context in Unsupervised Settings (FOCUS) to learn a feature mapping that is invariant to changes exemplified in training sets while retaining as much descriptive power as possible. While this method could apply to many unsupervised settings, we focus on applications in anomaly detection, where little task-labeled data is available. Our algorithm requires only non-anomalous sets of data, and does not require that the contexts in the training sets match the context of the test set. By maximizing within-set variance and minimizing between-set variance, we are able to identify and remove distracting features while retaining fidelity to the descriptiveness needed at test time. In the linear case, our formulation reduces to a generalized eigenvalue…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Fault Detection and Control Systems · Advanced Statistical Process Monitoring
