FEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM

With the development of technology and the speed of network-based applications, the threat of cybercrime also increases. One of the methods used to prevent the occurrence of such attacks is to use an intrusion detection system. IDS collect and analyze different areas of the computer and network to i...

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Main Author: UTAMA PUTRA (NIM: 23215061), AGUNG
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/25131
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:25131
spelling id-itb.:251312018-03-13T10:52:20ZFEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM UTAMA PUTRA (NIM: 23215061), AGUNG Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/25131 With the development of technology and the speed of network-based applications, the threat of cybercrime also increases. One of the methods used to prevent the occurrence of such attacks is to use an intrusion detection system. IDS collect and analyze different areas of the computer and network to identify attack attempts that could compromise the confidentiality, integrity and availability of systems and networks. In the building of IDS, the main problem of concern is the data dimensions that needs to be analyzed. Feature selection is an important step in building an IDS to select a subset of features that are small enough but still informative enough to characterize traffic, thereby reducing data dimensions and shortening development time. In this thesis, a feature selection method based on Maximal Information Coefficient for IDS is proposed. The proposed feature selection method will also be compared to the commonly used mutual information-based feature selection method. The proposed feature selection methods are tested using the UNSW-NB15 data set. The analysis shows that the selection of MIC-based features provides performance equally well with the selection of feature-based mutual information for intrusion detection systems, but with fewer number of features and therefore succeeding in reducing more development time of the IDS. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description With the development of technology and the speed of network-based applications, the threat of cybercrime also increases. One of the methods used to prevent the occurrence of such attacks is to use an intrusion detection system. IDS collect and analyze different areas of the computer and network to identify attack attempts that could compromise the confidentiality, integrity and availability of systems and networks. In the building of IDS, the main problem of concern is the data dimensions that needs to be analyzed. Feature selection is an important step in building an IDS to select a subset of features that are small enough but still informative enough to characterize traffic, thereby reducing data dimensions and shortening development time. In this thesis, a feature selection method based on Maximal Information Coefficient for IDS is proposed. The proposed feature selection method will also be compared to the commonly used mutual information-based feature selection method. The proposed feature selection methods are tested using the UNSW-NB15 data set. The analysis shows that the selection of MIC-based features provides performance equally well with the selection of feature-based mutual information for intrusion detection systems, but with fewer number of features and therefore succeeding in reducing more development time of the IDS.
format Theses
author UTAMA PUTRA (NIM: 23215061), AGUNG
spellingShingle UTAMA PUTRA (NIM: 23215061), AGUNG
FEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM
author_facet UTAMA PUTRA (NIM: 23215061), AGUNG
author_sort UTAMA PUTRA (NIM: 23215061), AGUNG
title FEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM
title_short FEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM
title_full FEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM
title_fullStr FEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM
title_full_unstemmed FEATURE SELECTION BASED ON MAXIMAL INFORMATION COEFFICIENT FOR INTRUSION DETECTION SYSTEM
title_sort feature selection based on maximal information coefficient for intrusion detection system
url https://digilib.itb.ac.id/gdl/view/25131
_version_ 1822020598852747264