A Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and Configuration

Intrusion Detection Systems (IDSs) are designed to monitor a networked environment and generate alerts whenever abnormal activities are detected. The number of these alerts can be very large making their evaluation by security analysts a difficult task. The management is complicated by the need to c...

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Bibliographic Details
Main Author: Alsubhi, Khalid
Language:en
Published: 2008
Subjects:
IDS
Online Access:http://hdl.handle.net/10012/3479
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spelling ndltd-WATERLOO-oai-uwspace.uwaterloo.ca-10012-34792013-01-08T18:50:59ZAlsubhi, Khalid2008-01-16T15:41:01Z2008-01-16T15:41:01Z2008-01-16T15:41:01Z2008http://hdl.handle.net/10012/3479Intrusion Detection Systems (IDSs) are designed to monitor a networked environment and generate alerts whenever abnormal activities are detected. The number of these alerts can be very large making their evaluation by security analysts a difficult task. The management is complicated by the need to configure the different components of alert evaluation systems. In addition, IDS alert management techniques, such as clustering and correlation, suffer from involving unrelated alerts in their processes and consequently provide results that are inaccurate and difficult to manage. Thus, the tuning of an IDS alert management system in order to provide optimal results remains a major challenge, which is further complicated by the large spectrum of potential attacks the system can be subject to. This thesis considers the specification and configuration issues of FuzMet, a novel IDS alert management system which employs several metrics and a fuzzy-logic based approach for scoring and prioritizing alerts. In addition, it features an alert rescoring technique that leads to a further reduction of the number of alerts. We study the impact of different configurations of the proposed metrics on the accuracy and completeness of the alert scores generated by FuzMet. Our approach is validated using the 2000 DARPA intrusion detection scenario specific datasets and comparative results between the Snort IDS alert scoring and FuzMet alert prioritization scheme are presented. A considerable number of simulations were conducted in order to determine the optimal configuration of FuzMet with selected simulation results presented and analyzed.enSecurityIntrusion detectionalert managementIDSA Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and ConfigurationThesis or DissertationSchool of Computer ScienceMaster of MathematicsComputer Science
collection NDLTD
language en
sources NDLTD
topic Security
Intrusion detection
alert management
IDS
Computer Science
spellingShingle Security
Intrusion detection
alert management
IDS
Computer Science
Alsubhi, Khalid
A Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and Configuration
description Intrusion Detection Systems (IDSs) are designed to monitor a networked environment and generate alerts whenever abnormal activities are detected. The number of these alerts can be very large making their evaluation by security analysts a difficult task. The management is complicated by the need to configure the different components of alert evaluation systems. In addition, IDS alert management techniques, such as clustering and correlation, suffer from involving unrelated alerts in their processes and consequently provide results that are inaccurate and difficult to manage. Thus, the tuning of an IDS alert management system in order to provide optimal results remains a major challenge, which is further complicated by the large spectrum of potential attacks the system can be subject to. This thesis considers the specification and configuration issues of FuzMet, a novel IDS alert management system which employs several metrics and a fuzzy-logic based approach for scoring and prioritizing alerts. In addition, it features an alert rescoring technique that leads to a further reduction of the number of alerts. We study the impact of different configurations of the proposed metrics on the accuracy and completeness of the alert scores generated by FuzMet. Our approach is validated using the 2000 DARPA intrusion detection scenario specific datasets and comparative results between the Snort IDS alert scoring and FuzMet alert prioritization scheme are presented. A considerable number of simulations were conducted in order to determine the optimal configuration of FuzMet with selected simulation results presented and analyzed.
author Alsubhi, Khalid
author_facet Alsubhi, Khalid
author_sort Alsubhi, Khalid
title A Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and Configuration
title_short A Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and Configuration
title_full A Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and Configuration
title_fullStr A Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and Configuration
title_full_unstemmed A Fuzzy-logic based Alert Prioritization Engine for IDSs: Architecture and Configuration
title_sort fuzzy-logic based alert prioritization engine for idss: architecture and configuration
publishDate 2008
url http://hdl.handle.net/10012/3479
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