过度拟合
鉴别器
自编码
计算机科学
人工智能
异常检测
机器学习
生成语法
变压器
生成对抗网络
对抗制
多元统计
一般化
模式识别(心理学)
数据挖掘
人工神经网络
深度学习
数学
探测器
电信
量子力学
物理
数学分析
电压
作者
Jia-Wei Miao,Haicheng Tao,Haoran Xie,Jianshan Sun,Jie Cao
标识
DOI:10.1016/j.ipm.2023.103569
摘要
The majority of existing anomaly detection methods for multivariate time series are based on Transformers and Autoencoders owing to their superior capabilities. However, these methods are susceptible to overfitting when there is insufficient data. To address this issue, we propose a novel unsupervised anomaly detection framework, which seamlessly integrates contrastive learning and Generative Adversarial Networks. More concretely, we utilize data augmentation techniques that incorporate geometric distribution masks to expand our training data, thereby enhancing its diversity. Then, a Transformer-based Autoencoder is trained within a Generative Adversarial Network framework to capture the underlying distribution for normal points. Additionally, we incorporate a contrastive loss into our discriminator to effectively regulate the GAN and ensure good generalization. Finally, anomalies are detected based on reconstruction errors. Numerous experiments on five real-world datasets demonstrated that our proposed method can effectively mitigates overfitting issues and obtains superior performance compared to state-of-the-art approaches. In particular, our model could achieve an average improvement of 9.28% in Precision, 11.33% in Recall, and 11.73% in F1-score.
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