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ICMLA
2003

Robust Support Vector Machines for Anomaly Detection in Computer Security

14 years 1 months ago
Robust Support Vector Machines for Anomaly Detection in Computer Security
— Using the 1998 DARPA BSM data set collected at MIT’s Lincoln Labs to study intrusion detection systems, the performance of robust support vector machines (RVSMs) was compared with that of conventional support vector machines and nearest neighbor classifiers in separating normal usage profiles from intrusive profiles of computer programs. The results indicate the superiority of RSVMs not only in terms of high intrusion detection accuracy and low false positives but also in terms of their generalization ability in the presence of noise and running time. Keywords—Intrusion detection, computer security, robust support vector machines, noisy data.
Wenjie Hu, Yihua Liao, V. Rao Vemuri
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2003
Where ICMLA
Authors Wenjie Hu, Yihua Liao, V. Rao Vemuri
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