An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection

The basic function of anomaly-based sensors is to detect any deviation from normal system behavior. However, clear merits between normal and abnormal patterns are very difficult to realize in practice especially when new systems are added or removed from the system network dynamically. A typica...

Full description

Bibliographic Details
Main Author: Jazzar, Mahmoud
Format: Thesis
Language:English
Published: 2009
Subjects:
Online Access:http://eprints.usm.my/53043/1/tesis%20an%20integrated%20approach%20using%20self%20cut.pdf
_version_ 1825906803126304768
author Jazzar, Mahmoud
author_facet Jazzar, Mahmoud
author_sort Jazzar, Mahmoud
collection USM
description The basic function of anomaly-based sensors is to detect any deviation from normal system behavior. However, clear merits between normal and abnormal patterns are very difficult to realize in practice especially when new systems are added or removed from the system network dynamically. A typical problem that arises when deploying intrusion detection sensors is their affinities of producing high rate of false alerts. Thus, it needs huge analysis efforts and time consuming odd jobs at higher levels, The main purpose 0fthis thesis is to propose a new soft computing inference engine model for intrusion detection. In this study, we have investigated an approach to anomaly intrusion detection based on causal knowledge reasoning. The approach is anomaly-based and utilizes causal knowledge inference based fuzzy cognitive maps (FCM) and self organizing maps (SOM).
first_indexed 2024-03-06T15:54:58Z
format Thesis
id usm.eprints-53043
institution Universiti Sains Malaysia
language English
last_indexed 2024-03-06T15:54:58Z
publishDate 2009
record_format dspace
spelling usm.eprints-530432022-06-24T07:59:42Z http://eprints.usm.my/53043/ An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection Jazzar, Mahmoud QR1-502 Microbiology The basic function of anomaly-based sensors is to detect any deviation from normal system behavior. However, clear merits between normal and abnormal patterns are very difficult to realize in practice especially when new systems are added or removed from the system network dynamically. A typical problem that arises when deploying intrusion detection sensors is their affinities of producing high rate of false alerts. Thus, it needs huge analysis efforts and time consuming odd jobs at higher levels, The main purpose 0fthis thesis is to propose a new soft computing inference engine model for intrusion detection. In this study, we have investigated an approach to anomaly intrusion detection based on causal knowledge reasoning. The approach is anomaly-based and utilizes causal knowledge inference based fuzzy cognitive maps (FCM) and self organizing maps (SOM). 2009-06 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/53043/1/tesis%20an%20integrated%20approach%20using%20self%20cut.pdf Jazzar, Mahmoud (2009) An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection. PhD thesis, Universiti Sains Malaysia.
spellingShingle QR1-502 Microbiology
Jazzar, Mahmoud
An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection
title An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection
title_full An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection
title_fullStr An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection
title_full_unstemmed An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection
title_short An Integrated Approach Using Self Organizing Maps And Fuzzy Cognitive Maps For Network Intrusion Detection
title_sort integrated approach using self organizing maps and fuzzy cognitive maps for network intrusion detection
topic QR1-502 Microbiology
url http://eprints.usm.my/53043/1/tesis%20an%20integrated%20approach%20using%20self%20cut.pdf
work_keys_str_mv AT jazzarmahmoud anintegratedapproachusingselforganizingmapsandfuzzycognitivemapsfornetworkintrusiondetection
AT jazzarmahmoud integratedapproachusingselforganizingmapsandfuzzycognitivemapsfornetworkintrusiondetection