用时间序列模型分析计算机安全事件数据

Edward M. Condon, Angela He, M. Cukier
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引用次数: 32

摘要

组织在处理和预防计算机和网络安全事件方面面临越来越多的挑战。安全事件会带来经济上的后果。其中包括在恢复过程中浪费的时间和资源,可能被盗的个人和/或专有信息,以及可能对股票价格产生负面影响或降低消费者对公司信心的声誉损害。能够了解和预测计算机和网络安全事件的趋势可以帮助组织分配资源以预防此类事件,并评估缓解策略。我们着眼于使用时间序列模型和大量安全事件数据集。我们检查建模数据的适当性,并考虑所需的转换。讨论了参数搜索和模型选择准则。然后,将时间序列模型的预测结果与非齐次泊松过程(NHPP)软件可靠性增长(SRG)模型的预测结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Computer Security Incident Data Using Time Series Models
Organizations face increasing challenges in addressing and preventing computer and network security incidents. There are financial consequences from security incidents. These include lost time and resources used during recovery, possible theft of personal and/or proprietary information, and reputational damage that may negatively impact stock prices or reduce consumer confidence in a company. Being able to understand and predict trends in computer and network security incidents can aid an organization with resource allocation for prevention of such incidents, as well as evaluation of mitigation strategies. We look at using time series models with a large set of security incident data. We examine appropriateness of the data for modeling and consider needed transformations. Parameter search and model selection criteria are discussed. Then, forecasts from time series models are compared to forecasts from Non-Homogeneous Poisson Process (NHPP) software reliability growth (SRG) models.
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