Multi-agent malicious behaviour detection

This research presents a novel technique termed Multi-Agent Malicious Behaviour Detection. The goal of Multi-Agent Malicious Behaviour Detection is to provide infrastructure to allow for the detection and observation of malicious multi-agent systems in computer network environments. This research...

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Bibliographic Details
Main Author: Wegner, Ryan
Other Authors: Anderson, John (Computer Science)
Published: 2012
Subjects:
AI
Online Access:http://hdl.handle.net/1993/9673
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spelling ndltd-MANITOBA-oai-mspace.lib.umanitoba.ca-1993-96732014-01-31T03:34:09Z Multi-agent malicious behaviour detection Wegner, Ryan Anderson, John (Computer Science) Scuse, David (Computer Science) McLeod, Robert (Electrical and Computer Engineering) Whyte, David (Government of Canada) AI Security Malware This research presents a novel technique termed Multi-Agent Malicious Behaviour Detection. The goal of Multi-Agent Malicious Behaviour Detection is to provide infrastructure to allow for the detection and observation of malicious multi-agent systems in computer network environments. This research explores combinations of machine learning techniques and fuses them with a multi-agent approach to malicious behaviour detection that effectively blends human expertise from network defenders with modern artificial intelligence. Success of the approach depends on the Multi-Agent Malicious Behaviour Detection system's capability to adapt to evolving malicious multi-agent system communications, even as the malicious software agents in network environments vary in their degree of autonomy and intelligence. This thesis research involves the design of this framework, its implementation into a working tool, and its evaluation using network data generated by an enterprise class network appliance to simulate both a standard educational network and an educational network containing malware traffic. 2012-10-24T20:40:49Z 2012-10-24T20:40:49Z 2012-10-24 http://hdl.handle.net/1993/9673
collection NDLTD
sources NDLTD
topic AI
Security
Malware
spellingShingle AI
Security
Malware
Wegner, Ryan
Multi-agent malicious behaviour detection
description This research presents a novel technique termed Multi-Agent Malicious Behaviour Detection. The goal of Multi-Agent Malicious Behaviour Detection is to provide infrastructure to allow for the detection and observation of malicious multi-agent systems in computer network environments. This research explores combinations of machine learning techniques and fuses them with a multi-agent approach to malicious behaviour detection that effectively blends human expertise from network defenders with modern artificial intelligence. Success of the approach depends on the Multi-Agent Malicious Behaviour Detection system's capability to adapt to evolving malicious multi-agent system communications, even as the malicious software agents in network environments vary in their degree of autonomy and intelligence. This thesis research involves the design of this framework, its implementation into a working tool, and its evaluation using network data generated by an enterprise class network appliance to simulate both a standard educational network and an educational network containing malware traffic.
author2 Anderson, John (Computer Science)
author_facet Anderson, John (Computer Science)
Wegner, Ryan
author Wegner, Ryan
author_sort Wegner, Ryan
title Multi-agent malicious behaviour detection
title_short Multi-agent malicious behaviour detection
title_full Multi-agent malicious behaviour detection
title_fullStr Multi-agent malicious behaviour detection
title_full_unstemmed Multi-agent malicious behaviour detection
title_sort multi-agent malicious behaviour detection
publishDate 2012
url http://hdl.handle.net/1993/9673
work_keys_str_mv AT wegnerryan multiagentmaliciousbehaviourdetection
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