Sciweavers

AICCSA
2005
IEEE

Multivariate statistical analysis for network attacks detection

13 years 10 months ago
Multivariate statistical analysis for network attacks detection
Detection and self-protection against viruses, worms, and network attacks is urgently needed to protect network systems and their applications from catastrophic failures. Once a network component is infected by viruses, worms, or became a target of network attacks, its operational state shifts from normal to abnormal state. Online monitoring mechanism can collect important aspects of network traffic and host data (CPU utilization, memory usage, etc.), that can be effectively used to detect abnormal behaviors caused by attacks. In this paper, we develop an online multivariate analysis algorithm to analyze the behaviors of system resources and network protocols in order to proactively detect network attacks. We have validated an algorithm and showed how it can proactively detect accurately well-known attacks such as Distributed Denial of Service, SQL Slammer Worm, and Email spam attacks.
Guangzhi Qu, Salim Hariri, Mazin S. Yousif
Added 24 Jun 2010
Updated 24 Jun 2010
Type Conference
Year 2005
Where AICCSA
Authors Guangzhi Qu, Salim Hariri, Mazin S. Yousif
Comments (0)