Network protection: intrusion detection with multivariate analysis techniques.
Fecha
2021-12Autor
Magna-Veloso, Óscar
Fuentealba-Cid, Diego
Cavieres-Santibáñez, Diego
Metadatos
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The need to protect computer networks from unknown attacks has influenced various works to develop and implement new methods to classify network connections, such as intrusion detection systems (IDS). Therefore, the purpose of this work is to compare the effectiveness of different multivariate analysis methods with software implementations of network intrusion detection systems (NIDS) and to propose a new NIDS model that improves protection against unknown attacks. The DARPA1998 dataset was used as a sample of a network under attack, and Snort software was used as a point of comparison for different methods tested. The performance of multivariate adaptive regression splines, support vector machine, and linear discriminant analysis was measured through a ROC curve, using the kdd99 derived dataset, showing that its accuracy exceeds the one that is achieved by the Snort software that uses rule-based detection.