Due to the expansion of high-speed Internet access, the need for secure and reliable networks has become more critical. The sophisti-cation of network attacks, as well as their severity, has also increased recently. As such, more and more organizations are becoming vulnerable to attack. The aim of this research is to classify network attacks using neural networks (NN), which leads to a higher detec-tion rate and a lower false alarm rate in a shorter time. This paper focuses on two classification types: a single class (normal, or attack), and a multi class (normal, DoS, PRB, R2L, U2R), where the category of attack is also detected by the NN. Extensive analysis is con-ducted in order to assess the translation of symbolic data, partitioning of...
Intrusion detection is an emerging area of research in the computer security and net-works with the ...
With the growing rate of cyber-attacks , there is a significant need for intrusion detection system...
In evaluating performance of 2 supervised machine learning algorithms like SVM (Support Vector Machi...
The use of Machine Learning (ML) techniques in Intrusion Detection Systems (IDS) has taken a promine...
Purpose. The article is aimed at the development of a methodology for detecting attacks on a compute...
This work is devoted to the problem of Neural Networks as means of Intrusion Detection. We show that...
The prevention of any type of cyber attack is indispensable because a single attack may break the se...
Recent research indicates a lot of attempts to create an Intrusion Detection System that is capable ...
Intrusion means illegal entry or unwelcome addition of the system. So, Intrusion detection system is...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
Over the last two years, machine learning has become rapidly utilized in cybersecurity, rising from ...
An intrusion detection system (IDS) is an important feature to employ in order to protect a system a...
Securing networks and their confidentiality from intrusions is crucial, and for this rea-son, Intrus...
In this paper, we present a comparative evaluation of deep learning approaches to network intrusion ...
Nowadays security concerns of computing devices are growing significantly. This is due to ever incre...
Intrusion detection is an emerging area of research in the computer security and net-works with the ...
With the growing rate of cyber-attacks , there is a significant need for intrusion detection system...
In evaluating performance of 2 supervised machine learning algorithms like SVM (Support Vector Machi...
The use of Machine Learning (ML) techniques in Intrusion Detection Systems (IDS) has taken a promine...
Purpose. The article is aimed at the development of a methodology for detecting attacks on a compute...
This work is devoted to the problem of Neural Networks as means of Intrusion Detection. We show that...
The prevention of any type of cyber attack is indispensable because a single attack may break the se...
Recent research indicates a lot of attempts to create an Intrusion Detection System that is capable ...
Intrusion means illegal entry or unwelcome addition of the system. So, Intrusion detection system is...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
Over the last two years, machine learning has become rapidly utilized in cybersecurity, rising from ...
An intrusion detection system (IDS) is an important feature to employ in order to protect a system a...
Securing networks and their confidentiality from intrusions is crucial, and for this rea-son, Intrus...
In this paper, we present a comparative evaluation of deep learning approaches to network intrusion ...
Nowadays security concerns of computing devices are growing significantly. This is due to ever incre...
Intrusion detection is an emerging area of research in the computer security and net-works with the ...
With the growing rate of cyber-attacks , there is a significant need for intrusion detection system...
In evaluating performance of 2 supervised machine learning algorithms like SVM (Support Vector Machi...