The analysis of security defense processes is of utmost importance in the
management of various cyber-security attacks, which are increasing in scope and
rapidity. Organizations need to optimize their resources based on a sound understanding
of the level of their security defense processes' efficiency and the impact of their
investment.
Modeling and characterization of the dynamics of cyber security management are
essential to risk prediction, damage assessment, and resource allocations. This
dissertation addresses the interactions between human factors and information systems.
On the basis of the spiral life cycle model of software development processes, we
develop a realistic, holistic security attack-defense model - Man-Machine Model (M3),
which combines human factors and information systems' (i.e., machine) states under an
integrated analytical framework. M3 incorporates man and machine components. The
man component is comprised of several variables such as Skill & Knowledge (SKKN)
and Teamwork Quality (TWQ). The machine component is composed of variables such
as traffic volume and the amount of downtime. M3 enables the analysis of intrusion
detection and incident response process efficiency, i.e., security defense team
performance.
With data analysis, we formulate and test four major research hypotheses based
on the data collected during security experiments. Through hypothesis testing, we
evaluate regression models to estimate the security defense team performance (i.e.
efficiency) at different levels of human intelligence (e.g., skill and knowledge) and teamwork (e.g., teamwork quality). We assess the fitness and significance of the
regression models, and verify their assumptions. Based on these results, organizations
can hire those who have an appropriate level of skill and knowledge when it concerns
investments to increase the level of skill and knowledge of security personnel. They also
can attempt to increase the level of skill and knowledge of security personnel.
Identifer | oai:union.ndltd.org:tamu.edu/oai:repository.tamu.edu:1969.1/4851 |
Date | 25 April 2007 |
Creators | Jung, Sung-Oh |
Contributors | In, Hoh Peter, Liu, Jyh-Charn |
Publisher | Texas A&M University |
Source Sets | Texas A and M University |
Language | en_US |
Detected Language | English |
Type | Book, Thesis, Electronic Dissertation, text |
Format | 887595 bytes, electronic, application/pdf, born digital |
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