异常检测的生成对抗网络:系统的文献综述

Shah Noor, S. Bazai, Muhammad Imran Ghafoor, Shahabzade Marjan, Saira Akram, Fatima Ali
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引用次数: 0

摘要

在许多研究领域,异常识别是一个主要问题。识别和正确分类异常数据是一项具有挑战性的任务,多年来以各种方式解决了这一问题。不同的方法,如传统的、监督的、无监督的和半监督的,用于异常检测。在文献中,存在各种基于机器学习的异常检测算法。由于每种算法都具有较好的检测性能,因此从现有的几种算法中选择一种异常检测算法是一项挑战。近年来,生成对抗网络在异常分类方面取得了显著的成果。本文旨在对基于生成对抗网络的异常检测方法进行系统的文献综述,并强调其优点。
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Generative Adversarial Networks for Anomaly Detection: A Systematic Literature Review
In numerous research areas, anomaly identification is a major problem. Identifying and properly classifying data as anomalous is a challenging task that is resolved in various manners over the years. Different approaches like traditional, supervised, unsupervised, and semi-supervised are used for anomaly detection. In the literature, various machine learning-based anomaly detection algorithms exist. It is challenging to choose one anomaly detection algorithm from the several available algorithms because each algorithm puts forward its good detection performance. In recent years, generative adversarial networks have shown remarkable results for anomaly classification. This paper aims to represent a systematic literature review of generative adversarial network-based approaches for anomaly detection and highlights their pros.
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