Compartir
Título
Computational-Intelligence Models for Visualization-based Intrusion Detection Systems.
Autor(es)
Palabras clave
Computer Science
Fecha de publicación
2006
Editor
Universidad de Salamanca
Citación
Hybrid Artificial Intelligence Systems. pp. 81-88.
Resumen
Intrusion Detection Systems (IDS’s) are essential components in a network communication infrastructure, as they enforce security by monitoring traffic and detecting malicious activities. In this research, Computational Intelligence models support an IDS technology to obtain a synthetic, effective visualization of the traffic analysis. Auto-Associative Back-Propagation (AABP) neural networks map feature vectors extracted from traffic sources into a compact representation on a 2-D display. During training, the neural network learns to compress the data in an unsupervised fashion; at run time, the trained neural component synthesizes an effective, 2-D representation of the traffic situation. Empirical tests involving Simple Network Management Protocol (SNMP) traffic proved the validity of the approach.
URI
Collections
- BISITE. Congresos [298]
Files in this item
Tamaño:
159.4Kb
Formato:
Adobe PDF













