Javascript must be enabled to continue!
Network Intrusion Detection Utilizing Autoencoder Neural Networks
View through CrossRef
In today's interconnected digital landscape, protecting computer networks from unauthorized access and cyber threats is critically important. Network Intrusion Detection Systems (NIDS) play a vital role in identifying and mitigating potential security breaches. This research paper examines the use of autoencoder neural networks, a subset of deep learning techniques, in the field of Network Intrusion Detection.Autoencoder neural networks are renowned for their ability to learn and represent data in a compressed, low-dimensional form. This study explores their potential to model network traffic patterns and identify anomalous activities. By training autoencoder networks on both normal and malicious network traffic data, we aim to develop effective intrusion detection models capable of distinguishing between benign and malicious network behavior.The paper provides a comprehensive analysis of the architecture and training methodologies of autoencoder neural networks for intrusion detection. It also investigates various data preprocessing techniques and feature engineering approaches to improve the model's performance. Additionally, the research assesses the robustness and scalability of autoencoder-based NIDS in real-world network environments.Ethical considerations in network intrusion detection, including privacy concerns and false positive rates, are also discussed. This approach ensures a balanced methodology that secures networks while respecting user privacy and minimizing disruptions. By compressing majority samples and increasing the minority sample count in challenging scenarios, the IDS achieves higher classification accuracy.
Title: Network Intrusion Detection Utilizing Autoencoder Neural Networks
Description:
In today's interconnected digital landscape, protecting computer networks from unauthorized access and cyber threats is critically important.
Network Intrusion Detection Systems (NIDS) play a vital role in identifying and mitigating potential security breaches.
This research paper examines the use of autoencoder neural networks, a subset of deep learning techniques, in the field of Network Intrusion Detection.
Autoencoder neural networks are renowned for their ability to learn and represent data in a compressed, low-dimensional form.
This study explores their potential to model network traffic patterns and identify anomalous activities.
By training autoencoder networks on both normal and malicious network traffic data, we aim to develop effective intrusion detection models capable of distinguishing between benign and malicious network behavior.
The paper provides a comprehensive analysis of the architecture and training methodologies of autoencoder neural networks for intrusion detection.
It also investigates various data preprocessing techniques and feature engineering approaches to improve the model's performance.
Additionally, the research assesses the robustness and scalability of autoencoder-based NIDS in real-world network environments.
Ethical considerations in network intrusion detection, including privacy concerns and false positive rates, are also discussed.
This approach ensures a balanced methodology that secures networks while respecting user privacy and minimizing disruptions.
By compressing majority samples and increasing the minority sample count in challenging scenarios, the IDS achieves higher classification accuracy.
Related Results
Analysis of a Fuzzy Based Intrusion Detection System in Wireless Ad Hoc Networks
Analysis of a Fuzzy Based Intrusion Detection System in Wireless Ad Hoc Networks
Technology and its growth is considerably enormous. This massive growth allows the opening of new fields of application in the domain of wireless networking and mobile ad-hoc netwo...
Development and application of biological intelligence technology in computer
Development and application of biological intelligence technology in computer
To study the development and application of biological intelligence technology in computers and realize high-precision network anomaly detection, a distributed intrusion detection ...
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...
ACM SIGCOMM computer communication review
ACM SIGCOMM computer communication review
At some point in the future, how far out we do not exactly know, wireless access to the Internet will outstrip all other forms of access bringing the freedom of mobility to the way...
MULTI-OBJECTIVE WHALE OPTIMIZED WITH RECURRENT DEEP LEARNING FOR EFFICIENT INTRUSION DETECTION IN HIGH SENSITIVE NETWORK TRAFFIC
MULTI-OBJECTIVE WHALE OPTIMIZED WITH RECURRENT DEEP LEARNING FOR EFFICIENT INTRUSION DETECTION IN HIGH SENSITIVE NETWORK TRAFFIC
Intrusion detection plays a pivotal aspect in providing security for the information and the main technology lies in identifying different networks in an accurate as well as precis...
Network intrusion detection using ensemble weighted voting classifier based honeypot framework
Network intrusion detection using ensemble weighted voting classifier based honeypot framework
<p>The Internet of Things (IoT) is a new model that connects physical objects and the Internet and has become one of the most important technological developments in computin...
Network intrusion detection method based on IEHO-SVM
Network intrusion detection method based on IEHO-SVM
As the growth of network technology, the network intrusion has become increasingly serious. An elephant herding optimization algorithm and support vector machine-based network intr...
A Collaborative Detection Method of Wireless Mobile Network Intrusion Based on Cloud Computing
A Collaborative Detection Method of Wireless Mobile Network Intrusion Based on Cloud Computing
In order to improve the communication security of wireless mobile network, a collaborative intrusion detection method based on cloud computing is studied. The mobile terminal and t...

