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Applications of Generative Adversarial Networks in Anomaly Detection: A Systematic Literature Review

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dc.rights.license CC BY eng
dc.contributor.author Sabuhi, Mikael cze
dc.contributor.author Zhou, Ming cze
dc.contributor.author Bezemer, Cor-Paul cze
dc.contributor.author Musílek, Petr cze
dc.date.accessioned 2025-12-05T10:41:20Z
dc.date.available 2025-12-05T10:41:20Z
dc.date.issued 2021 eng
dc.identifier.issn 2169-3536 eng
dc.identifier.uri http://hdl.handle.net/20.500.12603/1379
dc.description.abstract Anomaly detection has become an indispensable tool for modern society, applied in a wide range of applications, from detecting fraudulent transactions to malignant brain tumors. Over time, many anomaly detection techniques have been introduced. However, in general, they all suffer from the same problem: lack of data that represents anomalous behaviour. As anomalous behaviour is usually costly (or dangerous) for a system, it is difficult to gather enough data that represents such behaviour. This, in turn, makes it difficult to develop and evaluate anomaly detection techniques. Recently, generative adversarial networks (GANs) have attracted much attention in anomaly detection research, due to their unique ability to generate new data. In this paper, we present a systematic review of the literature in this area, covering 128 papers. The goal of this review paper is to analyze the relation between anomaly detection techniques and types of GANs, to identify the most common application domains for GAN-assisted and GAN-based anomaly detection, and to assemble information on datasets and performance metrics used to assess them. Our study helps researchers and practitioners to find the most suitable GAN-assisted anomaly detection technique for their application. In addition, we present a research roadmap for future studies in this area. In summary, GANs are used in anomaly detection to address the problem of insufficient amount of data for the anomalous behaviour, either through data augmentation or representation learning. The most commonly used GAN architectures are DCGANs, standard GANs, and cGANs. The primary application domains include medicine, surveillance and intrusion detection. eng
dc.format p. 161003-161029 eng
dc.language.iso eng eng
dc.relation.ispartof IEEE Access, volume 9, issue: November eng
dc.subject Anomaly detection eng
dc.subject data augmentation eng
dc.subject generative adversarial networks eng
dc.subject outlier detection eng
dc.subject representation learning. eng
dc.title Applications of Generative Adversarial Networks in Anomaly Detection: A Systematic Literature Review eng
dc.type article eng
dc.identifier.obd 43878343 eng
dc.identifier.wos 000730481100001 eng
dc.identifier.doi 10.1109/ACCESS.2021.3131949 eng
dc.publicationstatus postprint eng
dc.peerreviewed yes eng
dc.source.url https://ieeexplore.ieee.org/document/9631286 cze
dc.relation.publisherversion https://ieeexplore.ieee.org/document/9631286 eng
dc.rights.access Open Access eng


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