Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/36732
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Type: Journal article
Title: Application of online-training SVMs for real-time intrusion detection with different considerations
Author: Zhang, Z.
Shen, H.
Citation: Computer Communications, 2005; 28(12):1428-1442
Publisher: Elsevier Science BV
Issue Date: 2005
ISSN: 0140-3664
Statement of
Responsibility: 
Zonghua Zhang and Hong Shen
Abstract: As intrusion detection essentially can be formulated as a binary classification problem, it thus can be solved by an effective classification technique—Support Vector Machine (SVM). Additionally, some text processing techniques can also be employed for intrusion detection, based on the characterization of the frequencies of the system calls executed by the privileged programs. Based on the intersection of these two research domains, i.e. pattern recognition and text categorization, and breaking the strong traditional assumption that training data for intrusion detectors are readily available with high quality in batch, the conventional SVM, Robust SVM and one-class SVM have been modified respectively based on the idea from Online SVM in this paper, and their performances are compared with that of the original algorithms. After elaborate theoretical analysis, concrete experiments with 1998 DARPA BSM data set collected at MIT's Lincoln Labs are carried out. These experiments verify that the modified SVMs can be trained online and the results outperform the original ones with fewer support vectors (SVs) and less training time without decreasing detection accuracy. Both of these achievements could significantly benefit an effective online intrusion detection system.
Keywords: Computer security
Intrusion detection
Anomaly detection
Support vector machines
Text categorization
DOI: 10.1016/j.comcom.2005.01.014
Published version: http://dx.doi.org/10.1016/j.comcom.2005.01.014
Appears in Collections:Aurora harvest 6
Computer Science publications

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