Izenburua
A neural-visualization IDS for honeynet dataEgilea
Bertsioa
Berrikusten dagoen preprinta
Eskubideak
© 2012 World ScientificSarbidea
Sarbide irekiaArgitaratzailearen bertsioa
https://doi.org/10.1142/S0129065712500050Non argitaratua
International Journal of Neural Systems Vol. 22. Nº. 2. Pp 121-128, 2012Lehenengo orria
121Azken orria
128Argitaratzailea
World ScientificGako-hitzak
Artificial Neural Networks
Unsupervised Learning
Projection Models
Network & Computer Security ... [+]
Unsupervised Learning
Projection Models
Network & Computer Security ... [+]
Artificial Neural Networks
Unsupervised Learning
Projection Models
Network & Computer Security
Intrusion Detection
Honeypots [-]
Unsupervised Learning
Projection Models
Network & Computer Security
Intrusion Detection
Honeypots [-]
Laburpena
Neural intelligent systems can provide a visualization of the network traffic for security staff, in order to reduce the widely known high false-positive rate associated with misuse-based Intrusion De ... [+]
Neural intelligent systems can provide a visualization of the network traffic for security staff, in order to reduce the widely known high false-positive rate associated with misuse-based Intrusion Detection Systems (IDSs). Unlike previous work, this study proposes an unsupervised neural models that generate an intuitive visualization of the captured traffic, rather than network statistics. These snapshots of network events are immensely useful for security personnel that monitor network behavior. The system is based on the use of different neural projection and unsupervised methods for the visual inspection of honeypot data, and may be seen as a complementary network security tool that sheds light on internal data structures through visual inspection of the traffic itself. Furthermore, it is intended to facilitate verification and assessment of Snort performance (a well-known and widely-used misuse-based IDS), through the visualization of attack patterns. Empirical verification and comparison of the proposed projection methods are performed in a real domain, where two different case studies are defined and analyzed. [-]