Open AccessBook
Network Anomaly Detection: A Machine Learning Perspective
Dhruba K. Bhattacharyya,Jugal Kalita +1 more
- 18 Jun 2013
185
TL;DR: Examining numerous attacks in detail, the authors look at the tools that intruders use and show how to use this knowledge to protect networks.
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Abstract: With the rapid rise in the ubiquity and sophistication of Internet technology and the accompanying growth in the number of network attacks, network intrusion detection has become increasingly important. Anomaly-based network intrusion detection refers to finding exceptional or nonconforming patterns in network traffic data compared to normal behavior. Finding these anomalies has extensive applications in areas such as cyber security, credit card and insurance fraud detection, and military surveillance for enemy activities. Network Anomaly Detection: A Machine Learning Perspective presents machine learning techniques in depth to help you more effectively detect and counter network intrusion. In this book, youll learn about: Network anomalies and vulnerabilities at various layers The pros and cons of various machine learning techniques and algorithms A taxonomy of attacks based on their characteristics and behavior Feature selection algorithms How to assess the accuracy, performance, completeness, timeliness, stability, interoperability, reliability, and other dynamic aspects of a network anomaly detection system Practical tools for launching attacks, capturing packet or flow traffic, extracting features, detecting attacks, and evaluating detection performance Important unresolved issues and research challenges that need to be overcome to provide better protection for networks Examining numerous attacks in detail, the authors look at the tools that intruders use and show how to use this knowledge to protect networks. The book also provides material for hands-on development, so that you can code on a testbed to implement detection methods toward the development of your own intrusion detection system. It offers a thorough introduction to the state of the art in network anomaly detection using machine learning approaches and systems.
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Citations
Enhanced Network Anomaly Detection Based on Deep Neural Networks
Sheraz Naseer,Yasir Saleem,Shehzad Khalid,Muhammad Khawar Bashir,Jihun Han,Muhammad Munwar Iqbal,Kijun Han +6 more
TL;DR: Investigation of the suitability of deep learning approaches for anomaly-based intrusion detection system based on different deep neural network structures found promising results for real-world application in anomaly detection systems.
455
MIFS-ND: A mutual information-based feature selection method
TL;DR: A greedy feature selection method using mutual information that combines both feature–feature mutual information and feature–class mutual information to find an optimal subset of features to minimize redundancy and to maximize relevance among features is introduced.
420
A Survey on Machine Learning Techniques for Cyber Security in the Last Decade
TL;DR: This paper aims to provide a comprehensive overview of the challenges that ML techniques face in protecting cyberspace against attacks, by presenting a literature on ML techniques for cyber security including intrusion detection, spam detection, and malware detection on computer networks and mobile networks in the last decade.
CICIDS-2017 Dataset Feature Analysis With Information Gain for Anomaly Detection
Kurniabudi,Deris Stiawan,Darmawijoyo,Mohammad Yazid Bin Idris,Alwi M. Bamhdi,Rahmat Budiarto +5 more
TL;DR: The experiment results show that the number of relevant and significant features yielded by Information Gain affects significantly the improvement of detection accuracy and execution time.
Botnet in DDoS Attacks: Trends and Challenges
TL;DR: This survey presents a comprehensive overview of DDoS attacks, their causes, types with a taxonomy, and technical details of various attack launching tools.
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