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引用次数: 38
摘要
异常检测是预测与健康管理(PHM)系统中的一项关键任务。特别是在大多数实际应用中,往往存在缺乏标签的情况,这使得无监督异常检测非常有意义。此外,由于数据的多样性和信息的缺乏,无监督异常检测也被认为是一个具有挑战性的任务。变分自编码器(VAE)是一种随机生成模型,其目的是对输入数据进行尽可能接近的重构。本文将VAE应用于无监督异常检测任务中提取有价值的特征。在KDD CUP 99数据集和MNIST数据集上进行了对比实验。结果表明,由VAE获得的特征可以使无监督异常检测方法具有更好的性能。采用自编码器(AE)和核主成分分析(KPCA)进行比较。结果表明,VAE是其中性能最好的一种。
Unsupervised Anomaly Detection Using Variational Auto-Encoder based Feature Extraction
Anomaly detection is a key task in Prognostics and Health Management (PHM) system. Specially, in most practical applications, the lack of labels often exists which makes the unsupervised anomaly detection very meaningful. Furthermore, unsupervised anomaly detection is also considered as a challenging task due to the diversity and information-lack of data. Variational Auto-Encoder (VAE) is a stochastic generative model which is designed to reconstruct input data as close as possible. In this paper, VAE is applied to extract valuable features for the unsupervised anomaly detection tasks. Comparison experiments are conducted on KDD CUP 99 dataset and MNIST dataset. Results show that features obtained by VAE can make unsupervised anomaly detection approaches perform better. Auto-Encoder (AE) and Kernel Principle Component Analysis (KPCA) were applied as comparisons. The result demonstrates that VAE gets best performance among them.