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Using Population Characteristics to Build Forecasting Models for Computer Security Incidents

机译:使用人口特征建立计算机安全事件的预测模型

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Computer and network security incidents have financial and other consequences to organizations, such as direct business losses from theft of proprietary information or from just reputational damage. There are also costs for restoring operations and protecting against threats. Being able to quantify the impact of different factors within an organization may provide additional context for prevention and remediation efforts. This paper examines a large set of security incident data along with some population characteristic data from an organization's network. We discuss the rationale for examining the different population characteristics and their potential influence on computer security incidents. We then create logistic regression models using the population characteristics to forecast which machines in the population may be involved in a computer security incident. We evaluate the models using the forecasts as a set of unequal probability weights combined with repeated sampling. We also explore different time windows used for the inclusion of data during model creation.
机译:计算机和网络安全事件会对组织造成财务和其他后果,例如因专有信息被盗或仅因声誉受损而造成的直接业务损失。恢复操作和防御威胁也要付出代价。能够量化组织内不同因素的影响可能会为预防和补救工作提供更多的环境。本文研究了大量安全事件数据以及组织网络中的一些人口特征数据。我们讨论检查不同人群特征及其对计算机安全事件的潜在影响的基本原理。然后,我们使用种群特征创建逻辑回归模型,以预测种群中的哪些计算机可能与计算机安全事件有关。我们使用预测作为一组不等概率权重和重复抽样的组合来评估模型。我们还将探讨在模型创建过程中用于包含数据的不同时间窗口。

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