Data-driven Predictive Model of Windows 10 s Vulnerabilities | |
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Author | |
Abstract |
Predictive Security Metrics - A threat source that might exploit or create a hole in an information system, system security procedures, internal controls, or implementation is a computer operating system vulnerability. Since information security is a problem for everyone, predicting it is crucial. The typical method of vulnerability prediction involves manually identifying traits that might be related to unsafe code. An open framework for defining the characteristics and seriousness of software problems is called the Common Vulnerability Scoring System (CVSS). Base, Temporal, and Environmental are the three metric categories in CVSS. In this research, neural networks are utilized to build a predictive model of Windows 10 vulnerabilities using the published vulnerability data in the National Vulnerability Database. Different variants of neural networks are used which implements the back propagation for training the operating system vulnerabilities scores ranging from 0 to 10. Additionally, the research identifies the influential factors using Loess variable importance in neural networks, which shows that access complexity and polarity are only marginally important for predicting operating system vulnerabilities, while confidentiality impact, integrity impact, and availability impact are highly important. |
Year of Publication |
2022
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Date Published |
nov
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Publisher |
IEEE
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Conference Location |
Maldives, Maldives
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ISBN Number |
978-1-66547-095-7
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URL |
https://ieeexplore.ieee.org/document/9988548/
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DOI |
10.1109/ICECCME55909.2022.9988548
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