SOLUTION FOR MIMICKINGATTACKS DETECTION BASED ON USER BEHAVIORS IN BIDIRECTIONAL COUNT SKETCH
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Abstract
In this day and age, many private as well as government’sorganizations needa secure truthfulintrusion detection system (IDS) to protectthe system and the theirinformation. As on todayto develop accurate safety measuresinanintelligentsystem for distributed denial of service (DDoS) attacks is found to be one of the toughtasks. A DDoS attack causes the network of the target machine with many bots,sendsrecurrentpackets to the target machineand usually the servers of many corporationswereaffected bythese attacksand also it is difficult to discoverthe crackers in a networkwithnumerousbots from different networkand then leave the bots quickly after demandexecute. The proposed approachwidenthe approach usedfor DDoS attacks by screeningconfigurationsof DDoS attack using systempacket investigationand with the help of several machine learning methodsapplied to extract,learn the patterns of DDoS attacks. In this paper examination performed with the numbers of network packets existing using protocolsand the results obtained shows the system is accuratein identifyingDDoS attacks.
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