论文标题
供应链特征作为网络风险的预测因素:机器学习评估
Supply Chain Characteristics as Predictors of Cyber Risk: A Machine-Learning Assessment
论文作者
论文摘要
本文提供了第一个大规模数据驱动分析,以评估不同属性的预测能力,以评估网络攻击数据泄露的风险。此外,由于第三方迅速增加了网络攻击,该论文提供了第一个定量的经验证据,即数字供应链属性是企业网络风险的重要预测指标。该纸张利用旨在捕获企业内部网络安全管理质量的网络风险得分的外部网络风险得分,但通过观察到的第三方网络攻击场景以及网络科学研究的概念启发的供应链功能来增强这些评分。本文的主要定量结果是表明供应链网络特征相对于仅使用企业属性属性,供应链网络特征预测企业网络风险。特别是,与仅依靠内部企业功能的基本模型相比,供应链网络功能将样本外的AUC提高了2.3 \%。鉴于每个网络数据泄露是一个低概率高影响风险事件,因此预测功率的这些改进具有显着的价值。此外,该模型强调了与第三方网络攻击和违规机制相关的几个网络安全风险驱动因素,并就哪些干预措施有效地减轻这些风险有效提供了重要的见解。
This paper provides the first large-scale data-driven analysis to evaluate the predictive power of different attributes for assessing risk of cyberattack data breaches. Furthermore, motivated by rapid increase in third party enabled cyberattacks, the paper provides the first quantitative empirical evidence that digital supply-chain attributes are significant predictors of enterprise cyber risk. The paper leverages outside-in cyber risk scores that aim to capture the quality of the enterprise internal cybersecurity management, but augment these with supply chain features that are inspired by observed third party cyberattack scenarios, as well as concepts from network science research. The main quantitative result of the paper is to show that supply chain network features add significant detection power to predicting enterprise cyber risk, relative to merely using enterprise-only attributes. Particularly, compared to a base model that relies only on internal enterprise features, the supply chain network features improve the out-of-sample AUC by 2.3\%. Given that each cyber data breach is a low probability high impact risk event, these improvements in the prediction power have significant value. Additionally, the model highlights several cybersecurity risk drivers related to third party cyberattack and breach mechanisms and provides important insights as to what interventions might be effective to mitigate these risks.