posted on 2006-01-01, 00:00authored byYang Xiang, Wanlei Zhou
Recently high-speed networks have been utilized by attackers as Distributed Denial of Service (DDoS) attack infrastructure. Services on high-speed networks also have been attacked by successive waves of the DDoS attacks. How to sensitively and accurately detect the attack traffic, and quickly filter out the attack packets are still the major challenges in DDoS defense. Unfortunately most current defense approaches can not efficiently fulfill these tasks. Our approach is to find the network anomalies by using neural network and classify DDoS packets by a Bloom filter-based classifier (BFC). BFC is a set of spaceefficient data structures and algorithms for packet classification. The evaluation results show that the simple complexity, high classification speed and accuracy and low storage requirements of this classifier make it not only suitable for DDoS filtering in high-speed networks, but also suitable for other applications such as string matching for intrusion detection systems and IP lookup for programmable routers.<br>
History
Location
Republic of Korea
Open access
Yes
Language
eng
Notes
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Publication classification
C1 Refereed article in a scholarly journal
Copyright notice
2005, International Journal of Computer Science and Network Security
Journal
International journal of computer science and network security