作者
Gcinizwe Dlamini, Muhammad Fahim
发表日期
2021/10
期刊
Neural Computing and Applications
卷号
33
页码范围
13635-13646
出版商
Springer London
简介
Anomaly detection is a process to identify abnormal behavior that does not confirm the normal behavior. The abnormal behavior clues are few because it appears rarely. To detect each abnormal behavior, the problem is transformed into a multi-class classification task where it lies into data imbalance representation. In data imbalance setting, minority classes are over-sampled to improve the performance of the classifier. Existing methods are unable to learn the distribution of the minority class and effects the performance of classifier. In this research, we introduced a data generative model (DGM) to improve the minority class presence in the anomaly detection domain. Our approach is based on a conditional generative adversarial network to generate synthetic samples for minority classes. It includes the KL-divergence to guide the model towards the true learning of minority class distribution. In this way …
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