This paper focuses on an important research problem of cyberspace security. As an active defense technology, intrusion detection plays an important role in the field of network security. Traditional intrusion detection technologies have problems such as low accuracy, low detection efficiency, and time consuming. The shallow structure of machine learning has been unable to respond in time. To solve these problems, the deep learning-based method has been studied to improve intrusion detection. The advantage of deep learning is that it has a strong learning ability for features and can handle very complex data. Therefore, we propose a deep random forest-based network intrusion detection model. The first stage uses a slide window to segment ori...
Machine learning algorithms are effective in several applications, but they are not as much successf...
509-518Cybersecurity issues are increasing day by day, and it is becoming essential to address them ...
In this paper, we combine the sequential modeling capability of Recurrent Neural Network (RNN), and ...
Nowadays the network security is a crucial issue and traditional intrusion detection systems are not...
Big Data is an active business across the world. With the growing size of data comes many challenge...
AbstractWith the growing usage of technology, intrusion detection became an emerging area of researc...
Preventing network intrusion is the essential requirement of network security. In recent years, peop...
With the growing rate of cyber-attacks , there is a significant need for intrusion detection system...
The following paper provides a novel approach for Network Intrusion Detection System using Machine L...
Strong network connections make the risk of malicious activities emerge faster while dealing with bi...
An intrusion detection system serves as the backbone for providing high-level network security. Diff...
Intrusion Detection System (IDS) is a system that provides a layer of security to an organization’s ...
Network attacks in network traffic are vital and well known problems which can subdue the basic secu...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
The widespread use of the Internet has an adverse effect of being vulnerable to cyber attacks. Defen...
Machine learning algorithms are effective in several applications, but they are not as much successf...
509-518Cybersecurity issues are increasing day by day, and it is becoming essential to address them ...
In this paper, we combine the sequential modeling capability of Recurrent Neural Network (RNN), and ...
Nowadays the network security is a crucial issue and traditional intrusion detection systems are not...
Big Data is an active business across the world. With the growing size of data comes many challenge...
AbstractWith the growing usage of technology, intrusion detection became an emerging area of researc...
Preventing network intrusion is the essential requirement of network security. In recent years, peop...
With the growing rate of cyber-attacks , there is a significant need for intrusion detection system...
The following paper provides a novel approach for Network Intrusion Detection System using Machine L...
Strong network connections make the risk of malicious activities emerge faster while dealing with bi...
An intrusion detection system serves as the backbone for providing high-level network security. Diff...
Intrusion Detection System (IDS) is a system that provides a layer of security to an organization’s ...
Network attacks in network traffic are vital and well known problems which can subdue the basic secu...
International audienceIn this paper, we propose DiFF-RF, an ensemble approach composed of random par...
The widespread use of the Internet has an adverse effect of being vulnerable to cyber attacks. Defen...
Machine learning algorithms are effective in several applications, but they are not as much successf...
509-518Cybersecurity issues are increasing day by day, and it is becoming essential to address them ...
In this paper, we combine the sequential modeling capability of Recurrent Neural Network (RNN), and ...