Network Intrusion Detection System using Machine Learning Techniques
Details
This book presents the need for intrusion detection system as it has become an essential concern with the growing use of internet and increased network attacks such as virus, Trojan horse, worms and creative hackers. In addition, the basic details about the historic origin of IDS, the types of IDS, their deployment schemes and general architecture are considered. IDS using various machine learning techniques like fuzzy logic, genetic algorithm, neural network, decision tree etc are discussed and their pros and cons are discussed. Another potential approach is ensemble learning, which have been successfully applied to IDS for differentiating normal and anomalous types. In this book, various ensemble approaches like neuro-genetic, neuro-fuzzy, neurotree etc are explained. The implementation of these IDS depends again on the requirement of the security administrator. The IDS discussed in this book are adaptive to new environments by updating the audit data with recent attacks. If new attacks are identified these approaches can store the attack patterns in log generator for detecting future attacks.
Autorentext
Dr.Siva S.Sivatha Sindhu received her PhD in Information Security from Anna University,Chennai. She is a member of IEEE and CSI. She has published more than 40 research papers in reputed journals including Elsevier, Springer etc. Her areas of interest are Intrusion Detection System, Machine Laearning Techniques, Network Security etc.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783659410352
 - Anzahl Seiten 80
 - Genre Allgemein & Lexika
 - Herausgeber LAP LAMBERT Academic Publishing
 - Gewicht 137g
 - Untertitel A Quick Reference
 - Größe H220mm x B150mm x T6mm
 - Jahr 2013
 - EAN 9783659410352
 - Format Kartonierter Einband
 - ISBN 3659410357
 - Veröffentlichung 28.06.2013
 - Titel Network Intrusion Detection System using Machine Learning Techniques
 - Autor Siva S. Sivatha Sindhu , S. Geetha , S. Selvakumar
 - Sprache Englisch