We present a deep-learning (DL) anomaly-based Intrusion Detection System (IDS) for networked systems, which is able to detect in realtime anomalous network traffic corresponding to security attacks while they are ongoing. Compared to similar approaches, our IDS does not require a fixed number of network packets to analyze in order to make a decision on the type of traffic and it utilizes a more compact neural network which improves its realtime performance. As shown in the experiments using the CICIDS2017 and USTC-TFC-2016 datasets, the approach is able to detect anomalous traffic with high precision and recall. In addition, the approach is able to classify the network traffic by using only a very small portion of the network flows
Intrusion detection is one of the major challenges in today's security industry. Currently attack su...
The use of deep learning in various models is a powerful tool in detecting IoT attacks, identifying ...
Abstract Network Anomaly Detection is still an open challenging task that aims to detect anomalous n...
Anomaly-based Intrusion Detection is a key research topic in network security due to its ability to ...
Intrusion Detection Systems (IDS) provide substantial measures to protect networks assets. IDSs are ...
At present situation network communication is at high risk for external and internal attacks due to ...
The Internet of Things (IoT) significantly extends the attack surface of the Internet, making the us...
The widespread use of interconnectivity and interoperability of computing systems have become an ind...
The emergence of the internet of things (IOT) as a result of the development of the communications s...
5 tablas, 5 figurasNetwork traffic has recently known tremendous growth, and it is set to explode ov...
Nowadays, the small-medium enterprises security against cyber-attacks is a matter of great importanc...
The Internet of Things (IoT) idea has been developed to enhance people's lives by delivering a diver...
Application of deep learning to enhance the accuracy of intrusion detection in modern computer netwo...
Abstract: The more computer systems that communicate and cooperate, the more crucial it is to make o...
Network security encloses a wide set of technologies dealing with intrusions detection. Despite the ...
Intrusion detection is one of the major challenges in today's security industry. Currently attack su...
The use of deep learning in various models is a powerful tool in detecting IoT attacks, identifying ...
Abstract Network Anomaly Detection is still an open challenging task that aims to detect anomalous n...
Anomaly-based Intrusion Detection is a key research topic in network security due to its ability to ...
Intrusion Detection Systems (IDS) provide substantial measures to protect networks assets. IDSs are ...
At present situation network communication is at high risk for external and internal attacks due to ...
The Internet of Things (IoT) significantly extends the attack surface of the Internet, making the us...
The widespread use of interconnectivity and interoperability of computing systems have become an ind...
The emergence of the internet of things (IOT) as a result of the development of the communications s...
5 tablas, 5 figurasNetwork traffic has recently known tremendous growth, and it is set to explode ov...
Nowadays, the small-medium enterprises security against cyber-attacks is a matter of great importanc...
The Internet of Things (IoT) idea has been developed to enhance people's lives by delivering a diver...
Application of deep learning to enhance the accuracy of intrusion detection in modern computer netwo...
Abstract: The more computer systems that communicate and cooperate, the more crucial it is to make o...
Network security encloses a wide set of technologies dealing with intrusions detection. Despite the ...
Intrusion detection is one of the major challenges in today's security industry. Currently attack su...
The use of deep learning in various models is a powerful tool in detecting IoT attacks, identifying ...
Abstract Network Anomaly Detection is still an open challenging task that aims to detect anomalous n...