Anomaly Detection using Clustered Deep One-Class Classification

Younghwan Kim, H. Kim
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引用次数: 3

Abstract

Anomalies on Cyber-Physical System (CPS) can have a devastating effect on the entire system of complex CPS. Thus, it is important to detect anomalies quickly. Since CPS can collect sensor data in near real-time throughout the process, many attempts have been made to solve this problem from the perspective of data-driven security based on the collected data. However, since the CPS datasets are big data and most of the data are normal data, it has always been a great challenge to analyze the data and implement the anomaly detection model. In this paper, we propose and evaluate the Clustered Deep One-Class Classification (CD-OCC) model that combines the clustering algorithm and deep learning (DL) models using only a normal dataset for anomaly detection. We classify normal data into optimal cluster size using the K-means clustering algorithm. DL models train to classify each cluster based on clustered normal data, and we can obtain the softmax values in the process of predicting the cluster. We use the softmax values as a dataset with distilled knowledge of the DL model for anomaly detection. We transfer the softmax values to one-class classification (OCC) models to detect anomalies. As a result of the experiment, the F1-score of the proposed model shows performance close to 0.8 and performance improvement of about 0.5 compared to the encoded OCC model, which has reduced-dimensionality through auto-encoder as well as the basic OCC model.
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基于聚类深度单类分类的异常检测
信息物理系统异常会对整个复杂的信息物理系统造成毁灭性的影响。因此,快速检测异常非常重要。由于CPS可以在整个过程中近乎实时地收集传感器数据,因此基于收集到的数据,从数据驱动安全的角度来解决这个问题已经有很多尝试。然而,由于CPS数据集是大数据,而且大部分数据都是正常数据,因此对数据进行分析和实现异常检测模型一直是一个很大的挑战。在本文中,我们提出并评估了聚类深度单类分类(CD-OCC)模型,该模型结合了聚类算法和深度学习(DL)模型,仅使用正常数据集进行异常检测。我们使用K-means聚类算法将正常数据分类为最优簇大小。DL模型根据聚类的正态数据进行训练,对每个聚类进行分类,并在预测聚类的过程中获得softmax值。我们使用softmax值作为数据集,其中包含DL模型的提炼知识,用于异常检测。我们将softmax值转移到单类分类(OCC)模型中以检测异常。实验结果表明,与经过自编码器降维的编码OCC模型和基本OCC模型相比,该模型的f1得分接近0.8,性能提高约0.5。
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