Quantitative risk assessment under multi-context environments

Doctor of Philosophy === Department of Computing and Information Sciences === Xinming Ou === If you cannot measure it, you cannot improve it. Quantifying security with metrics is important not only because we want to have a scoring system to track our efforts in hardening cyber environments, but als...

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Main Author: Zhang, Su
Language:en_US
Published: Kansas State University 2014
Subjects:
Online Access:http://hdl.handle.net/2097/18634
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spelling ndltd-KSU-oai-krex.k-state.edu-2097-186342017-03-03T15:45:13Z Quantitative risk assessment under multi-context environments Zhang, Su Vulnerability assessment Quantitative risk assessment Cloud computing security Zero-day vulnerability assessment Software dependency risk assessment Network security (attack graph) Computer Science (0984) Doctor of Philosophy Department of Computing and Information Sciences Xinming Ou If you cannot measure it, you cannot improve it. Quantifying security with metrics is important not only because we want to have a scoring system to track our efforts in hardening cyber environments, but also because current labor resources cannot administrate the exponentially enlarged network without a feasible risk prioritization methodology. Unlike height, weight or temperature, risk from vulnerabilities is sophisticated to assess and the assessment is heavily context-dependent. Existing vulnerability assessment methodologies (e.g. CVSS scoring system, etc) mainly focus on the evaluation over intrinsic risk of individual vulnerabilities without taking their contexts into consideration. Vulnerability assessment over network usually output one aggregated metric indicating the security level of each host. However, none of these work captures the severity change of each individual vulnerabilities under different contexts. I have captured a number of such contexts for vulnerability assessment. For example, the correlation of vulnerabilities belonging to the same application should be considered while aggregating their risk scores. At system level, a vulnerability detected on a highly depended library code should be assigned with a higher risk metric than a vulnerability on a rarely used client side application, even when the two have the same intrinsic risk. Similarly at cloud environment, vulnerabilities with higher prevalences deserve more attention. Besides, zero-day vulnerabilities are largely utilized by attackers therefore should not be ignored while assessing the risks. Historical vulnerability information at application level can be used to predict underground risks. To assess vulnerability with a higher accuracy, feasibility, scalability and efficiency, I developed a systematic vulnerability assessment approach under each of these contexts. ​ 2014-11-04T19:48:36Z 2014-11-04T19:48:36Z 2014-11-04 2014 December Dissertation http://hdl.handle.net/2097/18634 en_US Kansas State University
collection NDLTD
language en_US
sources NDLTD
topic Vulnerability assessment
Quantitative risk assessment
Cloud computing security
Zero-day vulnerability assessment
Software dependency risk assessment
Network security (attack graph)
Computer Science (0984)
spellingShingle Vulnerability assessment
Quantitative risk assessment
Cloud computing security
Zero-day vulnerability assessment
Software dependency risk assessment
Network security (attack graph)
Computer Science (0984)
Zhang, Su
Quantitative risk assessment under multi-context environments
description Doctor of Philosophy === Department of Computing and Information Sciences === Xinming Ou === If you cannot measure it, you cannot improve it. Quantifying security with metrics is important not only because we want to have a scoring system to track our efforts in hardening cyber environments, but also because current labor resources cannot administrate the exponentially enlarged network without a feasible risk prioritization methodology. Unlike height, weight or temperature, risk from vulnerabilities is sophisticated to assess and the assessment is heavily context-dependent. Existing vulnerability assessment methodologies (e.g. CVSS scoring system, etc) mainly focus on the evaluation over intrinsic risk of individual vulnerabilities without taking their contexts into consideration. Vulnerability assessment over network usually output one aggregated metric indicating the security level of each host. However, none of these work captures the severity change of each individual vulnerabilities under different contexts. I have captured a number of such contexts for vulnerability assessment. For example, the correlation of vulnerabilities belonging to the same application should be considered while aggregating their risk scores. At system level, a vulnerability detected on a highly depended library code should be assigned with a higher risk metric than a vulnerability on a rarely used client side application, even when the two have the same intrinsic risk. Similarly at cloud environment, vulnerabilities with higher prevalences deserve more attention. Besides, zero-day vulnerabilities are largely utilized by attackers therefore should not be ignored while assessing the risks. Historical vulnerability information at application level can be used to predict underground risks. To assess vulnerability with a higher accuracy, feasibility, scalability and efficiency, I developed a systematic vulnerability assessment approach under each of these contexts. ​
author Zhang, Su
author_facet Zhang, Su
author_sort Zhang, Su
title Quantitative risk assessment under multi-context environments
title_short Quantitative risk assessment under multi-context environments
title_full Quantitative risk assessment under multi-context environments
title_fullStr Quantitative risk assessment under multi-context environments
title_full_unstemmed Quantitative risk assessment under multi-context environments
title_sort quantitative risk assessment under multi-context environments
publisher Kansas State University
publishDate 2014
url http://hdl.handle.net/2097/18634
work_keys_str_mv AT zhangsu quantitativeriskassessmentundermulticontextenvironments
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