Applying Software Reliability Models on Security Incidents

Edward M. Condon, M. Cukier, T. He
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引用次数: 26

Abstract

Computer and network security incidents have increasing financial consequences as demand for network accessibility and connectivity to resources continues to rise. These security incidents can lead to direct financial losses either through data theft of personal and/or proprietary information as well as a reputational damage which may negatively impact stock prices or consumer confidence in a company. This paper examines a large set of security incident data using tools from the software reliability community. We look at applying Non-Homogenous Poisson Process (NHPP) models as a method for describing the reliability growth process. We examine the full set of incidents as well as subsets of the data based on incident types. We look at using the Laplace test to guide selection of the appropriate models. Then, based on the trend results, we apply various NHPP models (i.e., Goel-Okumutu, S-Shaped, Duane, and K-Stage Curve) to illustrate the relevance of using these models to fit the incident data and to predict future incidents.
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软件可靠性模型在安全事件中的应用
随着对网络可访问性和资源连接性的需求不断上升,计算机和网络安全事件造成的经济后果越来越严重。这些安全事件可能通过个人和/或专有信息的数据盗窃导致直接的经济损失,以及可能对股票价格或消费者对公司信心产生负面影响的声誉损害。本文使用来自软件可靠性社区的工具检查了大量的安全事件数据。我们着眼于应用非齐次泊松过程(NHPP)模型作为描述可靠性增长过程的方法。我们根据事件类型检查完整的事件集以及数据子集。我们着眼于使用拉普拉斯检验来指导选择合适的模型。然后,基于趋势结果,我们应用了各种NHPP模型(即Goel-Okumutu, s形,Duane和k阶段曲线)来说明使用这些模型拟合事件数据和预测未来事件的相关性。
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