Abstract:
Network security has assumed utmost significance in today's highly linked world, where enterprises face more complex cyber threats. A key role in detecting and mitigating...Show MoreMetadata
Abstract:
Network security has assumed utmost significance in today's highly linked world, where enterprises face more complex cyber threats. A key role in detecting and mitigating these threats is played by network anomaly detection, which flags odd patterns and behaviors in network data. Traditional anomaly detection techniques, overburdened with having to cope with constantly shifting threats, have inspired a search for machine learning tools like Recurrent Neural Networks (RNNs). This paper aims at exploring how well Recurrent Neural Networks perform in the field of computer network-anomaly detection. We plan a complete analysis to compare the efficacy of RNN-based models against traditional methods like statistical techniques and simple neural networks, based on an extensive set of network traffic. In the collection are both normal network traffic and malicious intrusions. Our experiments indicate that RNNs have great potential for finding anomalies in networks. Models such as these can make use of the sequential dependencies existing in network traffic data, for instance--observing anomalies that would otherwise have been overlooked. We explore various RNN architectures, hyperparameter settings, and feature representations to further improve results. This paper examines problems such as model interpretability, scalability and computing resources which severely limit the practical usability of RNNs in real-world network security situations. We also provide means of making RNN-based anomaly detection systems immune to malicious interference.
Published in: 2024 International Conference on Intelligent and Innovative Technologies in Computing, Electrical and Electronics (IITCEE)
Date of Conference: 24-25 January 2024
Date Added to IEEE Xplore: 20 March 2024
ISBN Information:
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Recurrent Neural Network ,
- Anomaly Detection ,
- Network Anomaly ,
- Network Anomaly Detection ,
- Machine Learning ,
- Hyperparameters ,
- Real-world Situations ,
- Simple Neural Network ,
- Recurrent Neural Network Architecture ,
- RNN-based Models ,
- Statistical Methods ,
- Model Performance ,
- Deep Learning ,
- Receiver Operating Characteristic Curve ,
- Spatial Patterns ,
- Learning Algorithms ,
- Learning Rate ,
- Convolutional Neural Network ,
- Recurrent Neural Network Model ,
- Rule-based Methods ,
- Gaussian Mixture Model ,
- Precision And Recall ,
- Shallow Neural Network ,
- Intrusion Detection ,
- LSTM Network ,
- F1 Score ,
- Shallow Network ,
- Outlier Detection
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Recurrent Neural Network ,
- Anomaly Detection ,
- Network Anomaly ,
- Network Anomaly Detection ,
- Machine Learning ,
- Hyperparameters ,
- Real-world Situations ,
- Simple Neural Network ,
- Recurrent Neural Network Architecture ,
- RNN-based Models ,
- Statistical Methods ,
- Model Performance ,
- Deep Learning ,
- Receiver Operating Characteristic Curve ,
- Spatial Patterns ,
- Learning Algorithms ,
- Learning Rate ,
- Convolutional Neural Network ,
- Recurrent Neural Network Model ,
- Rule-based Methods ,
- Gaussian Mixture Model ,
- Precision And Recall ,
- Shallow Neural Network ,
- Intrusion Detection ,
- LSTM Network ,
- F1 Score ,
- Shallow Network ,
- Outlier Detection
- Author Keywords