Feature Selection for Intrusion Detection Systems: Using Data Mining Techniques - Gulshan Kumar - Libros - LAP LAMBERT Academic Publishing - 9783659515101 - 29 de enero de 2014
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Feature Selection for Intrusion Detection Systems: Using Data Mining Techniques

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Network security is a serious global concern. The increasing prevalence of malware and incidents of attacks hinders the utilization of the Internet to its greatest benefit and incur significant economic losses. The traditional approaches in securing systems against threats are designing mechanisms that create a protective shield, almost always with vulnerabilities. This has created Intrusion Detection Systems to be developed that complement traditional approaches. However, with the advancement of computer technology, the behavior of intrusions has become complex that makes the work of security experts hard to analyze and detect intrusions. In order to address these challenges, data mining techniques have become a possible solution. However, the performance of data mining algorithms is affected when no optimized features are provided. This is because, complex relationships can be seen as well between the features and intrusion classes contributing to high computational costs in processing tasks, subsequently leads to delays in identifying intrusions. Feature selection is thus important in detecting intrusions by allowing the data mining system to focus on what is really important.

Medios de comunicación Libros     Paperback Book   (Libro con tapa blanda y lomo encolado)
Publicado 29 de enero de 2014
ISBN13 9783659515101
Editores LAP LAMBERT Academic Publishing
Páginas 100
Dimensiones 150 × 6 × 225 mm   ·   167 g
Lengua Alemán  

Mas por Gulshan Kumar

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