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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >High-dimensional and large-scale anomaly detection using a linear one-class SVM with deep learning
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High-dimensional and large-scale anomaly detection using a linear one-class SVM with deep learning

机译:使用具有深度学习功能的线性一类SVM进行高维和大规模异常检测

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摘要

High-dimensional problem domains pose significant challenges for anomaly detection. The presence of irrelevant features can conceal the presence of anomalies. This problem, known as the 'curse of dimensionality', is an obstacle for many anomaly detection techniques. Building a robust anomaly detection model for use in high-dimensional spaces requires the combination of an unsupervised feature extractor and an anomaly detector. While one-class support vector machines are effective at producing decision surfaces from well-behaved feature vectors, they can be inefficient at modelling the variation in large, high-dimensional datasets. Architectures such as deep belief networks (DBNs) are a promising technique for learning robust features. We present a hybrid model where an unsupervised DBN is trained to extract generic underlying features, and a one-class SVM is trained from the features learned by the DBN. Since a linear kernel can be substituted for nonlinear ones in our hybrid model without loss of accuracy, our model is scalable and computationally efficient. The experimental results show that our proposed model yields comparable anomaly detection performance with a deep autoencoder, while reducing its training and testing time by a factor of 3 and 1000, respectively. (C) 2016 Elsevier Ltd. All rights reserved.
机译:高维问题域对异常检测提出了重大挑战。不相关特征的存在可以掩盖异常的存在。这个问题被称为“维数诅咒”,这是许多异常检测技术的障碍。建立用于高维空间的鲁棒异常检测模型需要无监督特征提取器和异常检测器的组合。虽然一类支持向量机可以有效地从行为良好的特征向量生成决策面,但它们在建模大型高维数据集中的变化时可能效率低下。诸如深度信任网络(DBN)之类的体系结构是一种学习强大功能的有前途的技术。我们提出了一种混合模型,其中训练无监督的DBN以提取通用的基础特征,然后从DBN所学习的特征中训练一类SVM。由于在我们的混合模型中可以用线性核代替非线性核,而不会损失准确性,因此我们的模型具有可伸缩性和计算效率。实验结果表明,我们提出的模型在使用深度自动编码器时可产生可比的异常检测性能,同时将其训练和测试时间分别减少了3倍和1000倍。 (C)2016 Elsevier Ltd.保留所有权利。

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