The emergent damage to computer network keeps increasing due to an extensive and prevalent connectivity on the Internet. Nowadays, attack detection strategies have become the most vital component in computer security despite the main preventive measure in detecting the attacks. The main issue with current detection systems is the inability to detect the malicious activity in certain circumstances. Most of the current intrusion detection systems implemented nowadays depend on expert systems where new attacks are not detectable. Therefore, this paper concern about Denial of Service (DoS) attack, detection using Neural Network. The data used in training and testing was KDD 99 data set based on the Defense Advanced Research Projects Agency (DAR...
Denial-of-Service (DoS) attacks are aimed at shutting a machine or network down to block users from ...
© International Research Publication House This paper discusses the concept and problem of detecting...
The article discusses the experience of using artificial neural networks to detect low-intensity (lo...
The emergent damage to computer network keeps increasing due to an extensive and prevalent connectiv...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
The potential damage to computer networks keeps increasing due to a growing reliance on the Internet...
A solo attack may cause a big loss in computer and network systems, its prevention is, therefore, ve...
A solo attack may cause a big loss in computer and network systems, its prevention is, therefore, ve...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
In this paper we introduce an intrusion detection system for Denial of Service (DoS) attacks against...
The prevention of any type of cyber attack is indispensable because a single attack may break the se...
Denial of service (DoS) attack is among the most significant types of attacks in cyber security. The...
Neural network help to determine the network attack such as Denial of Service (DoS), User to Root (U...
DoS (Denial of Service) attacks are becoming one of the most serious security threats to global netw...
Purpose. The article is aimed at the development of a methodology for detecting attacks on a compute...
Denial-of-Service (DoS) attacks are aimed at shutting a machine or network down to block users from ...
© International Research Publication House This paper discusses the concept and problem of detecting...
The article discusses the experience of using artificial neural networks to detect low-intensity (lo...
The emergent damage to computer network keeps increasing due to an extensive and prevalent connectiv...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
The potential damage to computer networks keeps increasing due to a growing reliance on the Internet...
A solo attack may cause a big loss in computer and network systems, its prevention is, therefore, ve...
A solo attack may cause a big loss in computer and network systems, its prevention is, therefore, ve...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
In this paper we introduce an intrusion detection system for Denial of Service (DoS) attacks against...
The prevention of any type of cyber attack is indispensable because a single attack may break the se...
Denial of service (DoS) attack is among the most significant types of attacks in cyber security. The...
Neural network help to determine the network attack such as Denial of Service (DoS), User to Root (U...
DoS (Denial of Service) attacks are becoming one of the most serious security threats to global netw...
Purpose. The article is aimed at the development of a methodology for detecting attacks on a compute...
Denial-of-Service (DoS) attacks are aimed at shutting a machine or network down to block users from ...
© International Research Publication House This paper discusses the concept and problem of detecting...
The article discusses the experience of using artificial neural networks to detect low-intensity (lo...