Seasonality in Vulnerability Discovery in Major Software Systems

Hyunchul Joh, Y. Malaiya
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引用次数: 3

Abstract

Prediction of vulnerability discovery rates can be used to assess security risks and to determine the resources needed to develop patches quickly to handle vulnerabilities discovered. An examination of the vulnerability data suggests a seasonal behavior that has not been modeled by the recently proposed vulnerability discovery models. This seasonality has not been identified or examined so far. This study examines whether vulnerability discovery rates for Windows NT, IIS Server and the Internet Explorer exhibit a significant annual seasonal pattern. Actual data has been analyzed using seasonal index and auto correlation function approaches to identify seasonality and to evaluate its statistical significance. The results for the three software systems show that there is indeed a significant annual seasonal pattern.
主要软件系统中漏洞发现的季节性
预测漏洞发现率可用于评估安全风险,并确定开发补丁以快速处理发现的漏洞所需的资源。对漏洞数据的检查表明,最近提出的漏洞发现模型没有对季节性行为进行建模。到目前为止,这种季节性还没有被确定或研究。本研究考察了Windows NT、IIS服务器和Internet Explorer的漏洞发现率是否表现出显著的年度季节性模式。采用季节指数法和自相关函数法对实际数据进行分析,以确定季节性并评价其统计显著性。三个软件系统的结果表明,确实存在明显的年度季节性模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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