Testing for Typicality with Respect to an Ensemble of Learned Distributions
Forrest Laine, Claire Tomlin

TL;DR
This paper introduces a novel ensemble-based method for anomaly detection in high-dimensional data by testing for typicality with respect to learned distributions, providing theoretical guarantees for its validity.
Contribution
It proposes a theoretically justified ensemble approach to account for learned models in goodness-of-fit testing, addressing a key gap in anomaly detection methods.
Findings
Ensemble of density models improves anomaly detection reliability.
Theoretical proof that the intersection of typical sets remains within the base distribution.
Method performs well on synthetic data demonstrating the approach's effectiveness.
Abstract
Methods of performing anomaly detection on high-dimensional data sets are needed, since algorithms which are trained on data are only expected to perform well on data that is similar to the training data. There are theoretical results on the ability to detect if a population of data is likely to come from a known base distribution, which is known as the goodness-of-fit problem. One-sample approaches to this problem offer significant computational advantages for online testing, but require knowing a model of the base distribution. The ability to correctly reject anomalous data in this setting hinges on the accuracy of the model of the base distribution. For high dimensional data, learning an accurate-enough model of the base distribution such that anomaly detection works reliably is very challenging, as many researchers have noted in recent years. Existing methods for the one-sample…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Data-Driven Disease Surveillance · Machine Learning and Algorithms
