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Detection and analysis of connection chains in network forensics

Network forensics is a young member of the bigger family of digital forensics discipline. In particular, it refers to digital forensics in networked environments. It represents an important extension to the model of network security where emphasis is traditionally put on prevention and to a lesser extent on detection. It focuses on the collection, and analysis of network packets and events caused by an intruder for investigative purposes. A key challenge in network forensics is to ensure that the network itself is forensically-ready, by providing an infrastructure to collect and analyze data in real-time. In this thesis, we propose an agent-based network forensics system, which is intended to add real-time network forensics capabilities into a controlled network. We also evaluate the proposed system by deploying and studying it in a real-life environment. Another challenge in network forensics arises because of attackers ability to move around in the network, which results in creating a chain of connections; commonly known as connection chains. In this thesis, we provide an extensive review and taxonomy of connection chains. Then, we propose a novel framework to detect them. The framework adopts a black-box approach by passively monitoring inbound and outbound packets at a host, and analyzing the observed packets using association rule mining. We assess the proposed framework using public network traces, and demonstrate both its efficiency and detection capabilities. We, finally, propose a profiling-based framework to investigate connection chains that are distributed over several ip addresses. The framework utilizes a simple yet extensible hacker model that integrates information about a hacker's linguistic, operating system and time of activity. We establish the effectiveness of the proposed approach through several simulations and an evaluation with real attack data.

Identiferoai:union.ndltd.org:uvic.ca/oai:dspace.library.uvic.ca:1828/2474
Date06 April 2010
CreatorsAlmulhem, Ahmad
ContributorsTraore, Issa
Source SetsUniversity of Victoria
LanguageEnglish, English
Detected LanguageEnglish
TypeThesis
RightsAvailable to the World Wide Web

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