A network intrusion detection model that fuses a convolutional neural network and a gated recurrent unit is proposed to address the problems associated with the low accuracy of existing intrusion detection models for the multiple classification of intrusions and low accuracy of class imbalance data detection. In this model, a hybrid sampling algorithm combining Adaptive Synthetic Sampling (ADASYN) and Repeated Edited nearest neighbors (RENN) is used for sample processing to solve the problem of positive and negative sample imbalance in the original dataset. The feature selection is carried out by combining Random Forest algorithm and Pearson correlation analysis to solve the problem of feature redundancy. Then, the spatial features are extr...
Accurate detection of network-based attacks is crucial to prevent security breaches of information s...
Many studies utilized machine learning schemes to improve network intrusion detection systems recent...
Abstract: Network Intrusion Detection has been an active area of research with the growing incidence...
The intrusion detection models (IDMs) based on machine learning play a vital role in the security pr...
In computer networks, Network Intrusion Detection System (NIDS) plays a very important role in ident...
As a security defense technique to protect networks from attacks, a network intrusion detection mode...
Network intrusion detection system can effectively detect network attack behaviour, which is very im...
The recent increase in hacks and computer network attacks around the world has intensified the need ...
In the modern era of active network throughput and communication, the study of Intrusion Detection S...
At present data transmission widely uses wireless network framework for transmitting large volume of...
Since the widespread adoption of cloud technologies, there has been an increase in the demand for Ne...
With the rising use of Internet technologies around the world, the number of network intruders and a...
The tremendous number of Internet of Things (IoT) applications, with their ubiquity, has provided us...
Preventing network intrusion is the essential requirement of network security. In recent years, peop...
Nowadays Artificial Intelligence (AI) and studies dedicated to this field are gaining much attention...
Accurate detection of network-based attacks is crucial to prevent security breaches of information s...
Many studies utilized machine learning schemes to improve network intrusion detection systems recent...
Abstract: Network Intrusion Detection has been an active area of research with the growing incidence...
The intrusion detection models (IDMs) based on machine learning play a vital role in the security pr...
In computer networks, Network Intrusion Detection System (NIDS) plays a very important role in ident...
As a security defense technique to protect networks from attacks, a network intrusion detection mode...
Network intrusion detection system can effectively detect network attack behaviour, which is very im...
The recent increase in hacks and computer network attacks around the world has intensified the need ...
In the modern era of active network throughput and communication, the study of Intrusion Detection S...
At present data transmission widely uses wireless network framework for transmitting large volume of...
Since the widespread adoption of cloud technologies, there has been an increase in the demand for Ne...
With the rising use of Internet technologies around the world, the number of network intruders and a...
The tremendous number of Internet of Things (IoT) applications, with their ubiquity, has provided us...
Preventing network intrusion is the essential requirement of network security. In recent years, peop...
Nowadays Artificial Intelligence (AI) and studies dedicated to this field are gaining much attention...
Accurate detection of network-based attacks is crucial to prevent security breaches of information s...
Many studies utilized machine learning schemes to improve network intrusion detection systems recent...
Abstract: Network Intrusion Detection has been an active area of research with the growing incidence...