Enhancing Anomaly Detection via Generating Diversified and Hard-to-distinguish Synthetic Anomalies
Hyuntae Kim, Changhee Lee

TL;DR
This paper introduces a domain-agnostic method for anomaly detection that generates diverse, hard-to-distinguish synthetic anomalies using conditional perturbators and a discriminator, improving detection across various data types.
Contribution
The authors propose a novel, domain-agnostic approach employing conditional perturbators and a discriminator to generate diverse, challenging anomalies, enhancing unsupervised anomaly detection.
Findings
Outperforms state-of-the-art benchmarks on real-world datasets
Effective in both image and tabular data
Adaptable to semi-supervised settings
Abstract
Unsupervised anomaly detection is a daunting task, as it relies solely on normality patterns from the training data to identify unseen anomalies during testing. Recent approaches have focused on leveraging domain-specific transformations or perturbations to generate synthetic anomalies from normal samples. The objective here is to acquire insights into normality patterns by learning to differentiate between normal samples and these crafted anomalies. However, these approaches often encounter limitations when domain-specific transformations are not well-specified such as in tabular data, or when it becomes trivial to distinguish between them. To address these issues, we introduce a novel domain-agnostic method that employs a set of conditional perturbators and a discriminator. The perturbators are trained to generate input-dependent perturbations, which are subsequently utilized to…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Network Security and Intrusion Detection · Advanced Malware Detection Techniques
MethodsSparse Evolutionary Training
