Journal article
High-Dimensional and Large-Scale Anomaly Detection using a Linear One-Class SVM with Deep Learning
S MONAZAM ERFANI, S Rajasegarar, S Karunasekera, C Leckie
Pattern Recognition | Pattern Recognition | Published : 2016
Abstract
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 promi..
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Grants
Awarded by National ICT Australia
Funding Acknowledgements
We thank the support from NICTA; the ARC Grants LP120100529 and LE120100129; University of Melbourne Early Career Research (ECR) grant; and the EU FP7 SocloTal grant.